This article presents a more improved consensus-based method for dealing with multi-person decision making (MPDM) that uses hesitant fuzzy preference relations (HFPRís) that arenít in the usual format. We proposed a Lukasiewicz transitivity (TL-transitivity)-based technique for establishing normalised hesitant fuzzy preference relations (NHFPRís) at the most essential level, after that, a model based on consensus is constructed. After that, a transitive closure formula is created in order to build TL -consistent hesitant fuzzy preference relations (HFPRís) and symmetrical matrices. Afterwards, a consistency analysis is performed to determine the degree of consistency of the data given by the decision makers (DMs), as a result, the consistency weights must be assigned to them. After combining consistency weights and preset(predeÖned) priority weights, the Önal priority weights vector of DMs is obtained (if there are any). The consensus process determines either data analysis and selection of a suitable alternative should be done directly or externally. The enhancement process aims to improve the DMís consensus measure, despite the implementation of an indicator for locating sluggish points, in the circumstance that an unfavorable agreement is achieved. Finally, a comparison case demonstrates the relevance and e§ectiveness of the proposed system. The conclusions indicate that the suggested strategy can provide insight into the MPDM system.
International Journal of Business and Management Invention (IJBMI)inventionjournals
International Journal of Business and Management Invention (IJBMI) is an international journal intended for professionals and researchers in all fields of Business and Management. IJBMI publishes research articles and reviews within the whole field Business and Management, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online
Application of Fuzzy Analytic Hierarchy Process and TOPSIS Methods for Destin...ijtsrd
Destination selection is one of the most become an extremely popular. Sometimes the terms tourism and tourism are used pejoratively to indicate a shallow interest in the societies or islands that traveler's tour. This system presents the use of fuzzy AHP and TOPSIS for deciding on the selection of destination as like the selection of island. In this system, eight countries that include in South East Asia Thailand, Singapore, Malaysia, Indonesia, Philippine, Vietnam, Cambodia, Brunei are used. At first, the user can choose the specific country to decide the island of these countries and their preferences attraction, environment, accommodation, transportation, restaurant, activity, entertainment and other facilities are taken as inputs and then display the list of alternatives that matched with user's preferences. Fuzzy analytic hierarchy process is used in determining the weight of criteria and alternatives. Technique for Order Preference by Similarity to Ideal Solution TOPSIS method is used for determining the final ranking of the alternatives. Finally, this system shows the list of destinations depend on user's preferences. Hnin Min Oo | Su Hlaing Hnin "Application of Fuzzy Analytic Hierarchy Process and TOPSIS Methods for Destination Selection" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-3 | Issue-5 , August 2019, URL: https://www.ijtsrd.com/papers/ijtsrd27975.pdfPaper URL: https://www.ijtsrd.com/computer-science/data-processing/27975/application-of-fuzzy-analytic-hierarchy-process-and-topsis-methods-for-destination-selection/hnin-min-oo
AHP technique a way to show preferences amongst alternativesijsrd.com
This article presents a review of the applications of Analytic Hierarchy Process (AHP). AHP is a multiple criteria decision-making tool that has been used in almost all the applications related with decision-making. Decisions involve many intangibles that need to be traded off. The Analytic Hierarchy Process (AHP) is a theory of measurement through pairwise comparisons and relies on the judgements of experts to derive priority scales. It is these scales that measure intangibles in relative terms. The comparisons are made using a scale of absolute judgements that represents how much more; one element dominates another with respect to a given attribute. The judgements may be inconsistent, and how to measure inconsistency and improve the judgements, when possible to obtain better consistency is a concern of the AHP. The derived priority scales are synthesised by multiplying them by the priority of their parent nodes and adding for all such nodes. An illustration is also included.
International Journal of Business and Management Invention (IJBMI)inventionjournals
International Journal of Business and Management Invention (IJBMI) is an international journal intended for professionals and researchers in all fields of Business and Management. IJBMI publishes research articles and reviews within the whole field Business and Management, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online
Application of Fuzzy Analytic Hierarchy Process and TOPSIS Methods for Destin...ijtsrd
Destination selection is one of the most become an extremely popular. Sometimes the terms tourism and tourism are used pejoratively to indicate a shallow interest in the societies or islands that traveler's tour. This system presents the use of fuzzy AHP and TOPSIS for deciding on the selection of destination as like the selection of island. In this system, eight countries that include in South East Asia Thailand, Singapore, Malaysia, Indonesia, Philippine, Vietnam, Cambodia, Brunei are used. At first, the user can choose the specific country to decide the island of these countries and their preferences attraction, environment, accommodation, transportation, restaurant, activity, entertainment and other facilities are taken as inputs and then display the list of alternatives that matched with user's preferences. Fuzzy analytic hierarchy process is used in determining the weight of criteria and alternatives. Technique for Order Preference by Similarity to Ideal Solution TOPSIS method is used for determining the final ranking of the alternatives. Finally, this system shows the list of destinations depend on user's preferences. Hnin Min Oo | Su Hlaing Hnin "Application of Fuzzy Analytic Hierarchy Process and TOPSIS Methods for Destination Selection" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-3 | Issue-5 , August 2019, URL: https://www.ijtsrd.com/papers/ijtsrd27975.pdfPaper URL: https://www.ijtsrd.com/computer-science/data-processing/27975/application-of-fuzzy-analytic-hierarchy-process-and-topsis-methods-for-destination-selection/hnin-min-oo
AHP technique a way to show preferences amongst alternativesijsrd.com
This article presents a review of the applications of Analytic Hierarchy Process (AHP). AHP is a multiple criteria decision-making tool that has been used in almost all the applications related with decision-making. Decisions involve many intangibles that need to be traded off. The Analytic Hierarchy Process (AHP) is a theory of measurement through pairwise comparisons and relies on the judgements of experts to derive priority scales. It is these scales that measure intangibles in relative terms. The comparisons are made using a scale of absolute judgements that represents how much more; one element dominates another with respect to a given attribute. The judgements may be inconsistent, and how to measure inconsistency and improve the judgements, when possible to obtain better consistency is a concern of the AHP. The derived priority scales are synthesised by multiplying them by the priority of their parent nodes and adding for all such nodes. An illustration is also included.
A Model of Hybrid Approach for FAHP and TOPSIS with Supporting by DSSIJERA Editor
Nowadays major decision are introduced as a milestone in the life of organizations. The purpose of this paper is
to provide a hybrid model to decide the optimal way of solving problems based on fuzzy AHP (FAHP) and
prioritization techniques based on similarity to ideal solution (TOPSIS) and support the model using decision
support system.Theresults ofeachcasewill be consideredseparately and the result ofthe combinedapproachis
shown. The output of the combination approach can prove due to its high power. Application of our model to
different organizationsand companies show a fine improvement and fair agreement for output proficiency of the
systems.
Analytical Hierarchical Process has been used as a useful methodology for multi-criteria decision making environments with substantial applications in recent years. But the weakness of the traditional AHP method lies in the use of subjective judgement based assessment and standardized scale for pairwise comparison matrix creation. The paper proposes a Condorcet Voting Theory based AHP method to solve multi criteria decision making problems where Analytical Hierarchy Process (AHP) is combined with Condorcet theory based preferential voting technique followed by a quantitative ratio method for framing the comparison matrix instead of the standard importance scale in traditional AHP approach. The consistency ratio (CR) is calculated for both the approaches to determine and compare the consistency of both the methods. The results reveal Condorcet- AHP method to be superior generating lower consistency ratio and more accurate ranking of the criterion for solving MCDM problems.
Human Resource Recruitment using Fuzzy Decision Making MethodIJSRD
Traditional way of recruiting personnel was through a group decision making problem under multiple criteria containing subjectivity, imprecision and vagueness. In order to keep up with increasing competition of globalization and fast technological improvements and changes, Human resource field needs the best fit employee for a job vacancy. This paper proposes a Fuzzy Decision Making (FDM) method for recruitment process of Human Resource management, which is based on the Fuzzy set theory. Different criteria of human resource recruitment process will be given fuzzy linguistic terms such as absolutely low, extremely low, very low, low, medium, high, very high, extremely high, absolutely high depends upon the importance given by the Human Resource manager. Fuzzy Scaled Weight (FSW) will be calculated for all the criteria. Cumulative Fuzzy Value (CFV) is calculated for all the applicants from Fuzzy Scaled Weight values. Interview Fuzzy Value (IFV) is given by the human resource manager for all the applicants attending interviews. Final Fuzzy Value (FFV) will be calculated aggregating both Cumulative Fuzzy Value and Interview Fuzzy Value. Finally, all the applicant records are arranged in the order of FFV values. Then, Human resource manager can select the applicants easily from the arranged list. Fuzzy Decision Making method system is developed to illustrate the above FDM method for the Human Resource recruitment process.
Selection of Equipment by Using Saw and Vikor Methods IJERA Editor
Now a days, Lean manufacturing becomes a key strategy for global competition. In this environment the most important process is the selection of the equipment. Equipment selection is a very important issue for effective manufacturing companies due to the fact that improperly selected machines can negatively affect the overall performance of manufacturing system. The availability of large number of equipments are more hence, the selection of suitable equipment for certain operation/ product becomes difficult. On the other hand selecting the best equipment among many alternatives is a Multi-criteria decision making ( MCDM ) Problems. In this Paper an approach which employs SAW, VIKOR Methods proposed for the equipment selection problem. The SAW and VIKOR is used to analyze the structure of the equipment selection problem and to determine weights of criteria and to obtain Final Ranking
4313ijmvsc02A FUZZY AHP APPROACH FOR SUPPLIER SELECTION PROBLEM: A CASE STUDY...ijmvsc
Supplier selection is one of the most important functions of a purchasing department. Since by deciding the best supplier, companies can save material costs and increase competitive advantage. However this decision becomes complicated in case of multiple suppliers, multiple conflicting criteria, and imprecise parameters. In addition the uncertainty and vagueness of the experts’ opinion is the prominent characteristic of the problem. Therefore an extensively used multi criteria decision making tool Fuzzy AHP can be utilized as an approach for supplier selection problem. This paper reveals the application of Fuzzy AHP in a gear motor company determining the best supplier with respect to selected criteria. The contribution of this study is not only the application of the Fuzzy AHP methodology for supplier selection problem, but also releasing a comprehensive literature review of multi criteria decision making problems. In addition by stating the steps of Fuzzy AHP clearly and numerically, this study can be a guide of the methodology to be implemented to other multiple criteria decision making problems.
Analysing Stakeholder Consensus for a Sustainable Transport Development Decis...BME
In any public service development decision, it is essential to reach the stakeholders’ agreement to gain a sustainable result, which is accepted by all involved groups. In case this criterion is violated, the impact of the development will be less than expected due to the resistance of one group or another. Concerning public urban transport decisions, the lack of consensus might cause lower utilisation of public vehicles, thus more severe environmental damage, traffic problems and negative economic impacts. This paper aims to introduce a decision support procedure (applying the current MCDM techniques; Fuzzy and Interval AHP) which is capable of analysing and creating consensus among different stakeholder participants in a transport development problem. The combined application of FAHP and IAHP ensures that the consensus creation is not only based on an automated computation process (just as in IAHP) but also on the consideration of specific group interests. Thus, the decision makers have the liberty to express their preferences in urban planning, along with the consideration of numerical results. The procedure has been tested in a real public transport improvement decision as a follow-up project, in an emerging city, Mersin, Turkey. Results show that by the application of the proposed techniques, decision-makers can be more aware of the conflicts of interests among the involved groups, and they can pay more attention to possible violations.
Fuzzy soft set approach in decision making plays a crucial role by using Dempster–Shafer theory of evidence. First, the uncertain degrees of several parameters are obtained via grey relational analysis that apply to calculate the grey mean relational degree. Secondly, a mass functions of different independent choices with several parameters have given according to the uncertain degree. Lastly, aggregate the choices into a collective choices, Dempster’s rule of evidence combination have been utilized. The aforesaid soft computing based method have been applied on decision making problem.
A Review of MCDM in Transportation and Environmental ProjectsBME
The world becomes unstable, especially politically and economically and the problem is getting more complicated every day that needs more and better analytical tools for making decisions and takes part right sides in decision-making to avoid as much as possible new problems that we would have from decisions.
6th International Conference on Machine Learning & Applications (CMLA 2024)ClaraZara1
6th International Conference on Machine Learning & Applications (CMLA 2024) will provide an excellent international forum for sharing knowledge and results in theory, methodology and applications of on Machine Learning & Applications.
A Model of Hybrid Approach for FAHP and TOPSIS with Supporting by DSSIJERA Editor
Nowadays major decision are introduced as a milestone in the life of organizations. The purpose of this paper is
to provide a hybrid model to decide the optimal way of solving problems based on fuzzy AHP (FAHP) and
prioritization techniques based on similarity to ideal solution (TOPSIS) and support the model using decision
support system.Theresults ofeachcasewill be consideredseparately and the result ofthe combinedapproachis
shown. The output of the combination approach can prove due to its high power. Application of our model to
different organizationsand companies show a fine improvement and fair agreement for output proficiency of the
systems.
Analytical Hierarchical Process has been used as a useful methodology for multi-criteria decision making environments with substantial applications in recent years. But the weakness of the traditional AHP method lies in the use of subjective judgement based assessment and standardized scale for pairwise comparison matrix creation. The paper proposes a Condorcet Voting Theory based AHP method to solve multi criteria decision making problems where Analytical Hierarchy Process (AHP) is combined with Condorcet theory based preferential voting technique followed by a quantitative ratio method for framing the comparison matrix instead of the standard importance scale in traditional AHP approach. The consistency ratio (CR) is calculated for both the approaches to determine and compare the consistency of both the methods. The results reveal Condorcet- AHP method to be superior generating lower consistency ratio and more accurate ranking of the criterion for solving MCDM problems.
Human Resource Recruitment using Fuzzy Decision Making MethodIJSRD
Traditional way of recruiting personnel was through a group decision making problem under multiple criteria containing subjectivity, imprecision and vagueness. In order to keep up with increasing competition of globalization and fast technological improvements and changes, Human resource field needs the best fit employee for a job vacancy. This paper proposes a Fuzzy Decision Making (FDM) method for recruitment process of Human Resource management, which is based on the Fuzzy set theory. Different criteria of human resource recruitment process will be given fuzzy linguistic terms such as absolutely low, extremely low, very low, low, medium, high, very high, extremely high, absolutely high depends upon the importance given by the Human Resource manager. Fuzzy Scaled Weight (FSW) will be calculated for all the criteria. Cumulative Fuzzy Value (CFV) is calculated for all the applicants from Fuzzy Scaled Weight values. Interview Fuzzy Value (IFV) is given by the human resource manager for all the applicants attending interviews. Final Fuzzy Value (FFV) will be calculated aggregating both Cumulative Fuzzy Value and Interview Fuzzy Value. Finally, all the applicant records are arranged in the order of FFV values. Then, Human resource manager can select the applicants easily from the arranged list. Fuzzy Decision Making method system is developed to illustrate the above FDM method for the Human Resource recruitment process.
Selection of Equipment by Using Saw and Vikor Methods IJERA Editor
Now a days, Lean manufacturing becomes a key strategy for global competition. In this environment the most important process is the selection of the equipment. Equipment selection is a very important issue for effective manufacturing companies due to the fact that improperly selected machines can negatively affect the overall performance of manufacturing system. The availability of large number of equipments are more hence, the selection of suitable equipment for certain operation/ product becomes difficult. On the other hand selecting the best equipment among many alternatives is a Multi-criteria decision making ( MCDM ) Problems. In this Paper an approach which employs SAW, VIKOR Methods proposed for the equipment selection problem. The SAW and VIKOR is used to analyze the structure of the equipment selection problem and to determine weights of criteria and to obtain Final Ranking
4313ijmvsc02A FUZZY AHP APPROACH FOR SUPPLIER SELECTION PROBLEM: A CASE STUDY...ijmvsc
Supplier selection is one of the most important functions of a purchasing department. Since by deciding the best supplier, companies can save material costs and increase competitive advantage. However this decision becomes complicated in case of multiple suppliers, multiple conflicting criteria, and imprecise parameters. In addition the uncertainty and vagueness of the experts’ opinion is the prominent characteristic of the problem. Therefore an extensively used multi criteria decision making tool Fuzzy AHP can be utilized as an approach for supplier selection problem. This paper reveals the application of Fuzzy AHP in a gear motor company determining the best supplier with respect to selected criteria. The contribution of this study is not only the application of the Fuzzy AHP methodology for supplier selection problem, but also releasing a comprehensive literature review of multi criteria decision making problems. In addition by stating the steps of Fuzzy AHP clearly and numerically, this study can be a guide of the methodology to be implemented to other multiple criteria decision making problems.
Analysing Stakeholder Consensus for a Sustainable Transport Development Decis...BME
In any public service development decision, it is essential to reach the stakeholders’ agreement to gain a sustainable result, which is accepted by all involved groups. In case this criterion is violated, the impact of the development will be less than expected due to the resistance of one group or another. Concerning public urban transport decisions, the lack of consensus might cause lower utilisation of public vehicles, thus more severe environmental damage, traffic problems and negative economic impacts. This paper aims to introduce a decision support procedure (applying the current MCDM techniques; Fuzzy and Interval AHP) which is capable of analysing and creating consensus among different stakeholder participants in a transport development problem. The combined application of FAHP and IAHP ensures that the consensus creation is not only based on an automated computation process (just as in IAHP) but also on the consideration of specific group interests. Thus, the decision makers have the liberty to express their preferences in urban planning, along with the consideration of numerical results. The procedure has been tested in a real public transport improvement decision as a follow-up project, in an emerging city, Mersin, Turkey. Results show that by the application of the proposed techniques, decision-makers can be more aware of the conflicts of interests among the involved groups, and they can pay more attention to possible violations.
Fuzzy soft set approach in decision making plays a crucial role by using Dempster–Shafer theory of evidence. First, the uncertain degrees of several parameters are obtained via grey relational analysis that apply to calculate the grey mean relational degree. Secondly, a mass functions of different independent choices with several parameters have given according to the uncertain degree. Lastly, aggregate the choices into a collective choices, Dempster’s rule of evidence combination have been utilized. The aforesaid soft computing based method have been applied on decision making problem.
A Review of MCDM in Transportation and Environmental ProjectsBME
The world becomes unstable, especially politically and economically and the problem is getting more complicated every day that needs more and better analytical tools for making decisions and takes part right sides in decision-making to avoid as much as possible new problems that we would have from decisions.
Similar to A CONSENSUS MODEL FOR GROUP DECISION MAKING WITH HESITANT FUZZY INFORMATION (20)
6th International Conference on Machine Learning & Applications (CMLA 2024)ClaraZara1
6th International Conference on Machine Learning & Applications (CMLA 2024) will provide an excellent international forum for sharing knowledge and results in theory, methodology and applications of on Machine Learning & Applications.
Cosmetic shop management system project report.pdfKamal Acharya
Buying new cosmetic products is difficult. It can even be scary for those who have sensitive skin and are prone to skin trouble. The information needed to alleviate this problem is on the back of each product, but it's thought to interpret those ingredient lists unless you have a background in chemistry.
Instead of buying and hoping for the best, we can use data science to help us predict which products may be good fits for us. It includes various function programs to do the above mentioned tasks.
Data file handling has been effectively used in the program.
The automated cosmetic shop management system should deal with the automation of general workflow and administration process of the shop. The main processes of the system focus on customer's request where the system is able to search the most appropriate products and deliver it to the customers. It should help the employees to quickly identify the list of cosmetic product that have reached the minimum quantity and also keep a track of expired date for each cosmetic product. It should help the employees to find the rack number in which the product is placed.It is also Faster and more efficient way.
An Approach to Detecting Writing Styles Based on Clustering Techniquesambekarshweta25
An Approach to Detecting Writing Styles Based on Clustering Techniques
Authors:
-Devkinandan Jagtap
-Shweta Ambekar
-Harshit Singh
-Nakul Sharma (Assistant Professor)
Institution:
VIIT Pune, India
Abstract:
This paper proposes a system to differentiate between human-generated and AI-generated texts using stylometric analysis. The system analyzes text files and classifies writing styles by employing various clustering algorithms, such as k-means, k-means++, hierarchical, and DBSCAN. The effectiveness of these algorithms is measured using silhouette scores. The system successfully identifies distinct writing styles within documents, demonstrating its potential for plagiarism detection.
Introduction:
Stylometry, the study of linguistic and structural features in texts, is used for tasks like plagiarism detection, genre separation, and author verification. This paper leverages stylometric analysis to identify different writing styles and improve plagiarism detection methods.
Methodology:
The system includes data collection, preprocessing, feature extraction, dimensional reduction, machine learning models for clustering, and performance comparison using silhouette scores. Feature extraction focuses on lexical features, vocabulary richness, and readability scores. The study uses a small dataset of texts from various authors and employs algorithms like k-means, k-means++, hierarchical clustering, and DBSCAN for clustering.
Results:
Experiments show that the system effectively identifies writing styles, with silhouette scores indicating reasonable to strong clustering when k=2. As the number of clusters increases, the silhouette scores decrease, indicating a drop in accuracy. K-means and k-means++ perform similarly, while hierarchical clustering is less optimized.
Conclusion and Future Work:
The system works well for distinguishing writing styles with two clusters but becomes less accurate as the number of clusters increases. Future research could focus on adding more parameters and optimizing the methodology to improve accuracy with higher cluster values. This system can enhance existing plagiarism detection tools, especially in academic settings.
Welcome to WIPAC Monthly the magazine brought to you by the LinkedIn Group Water Industry Process Automation & Control.
In this month's edition, along with this month's industry news to celebrate the 13 years since the group was created we have articles including
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A hierarchical digital twin of a Naval DC power system has been developed and experimentally verified. Similar to other state-of-the-art digital twins, this technology creates a digital replica of the physical system executed in real-time or faster, which can modify hardware controls. However, its advantage stems from distributing computational efforts by utilizing a hierarchical structure composed of lower-level digital twin blocks and a higher-level system digital twin. Each digital twin block is associated with a physical subsystem of the hardware and communicates with a singular system digital twin, which creates a system-level response. By extracting information from each level of the hierarchy, power system controls of the hardware were reconfigured autonomously. This hierarchical digital twin development offers several advantages over other digital twins, particularly in the field of naval power systems. The hierarchical structure allows for greater computational efficiency and scalability while the ability to autonomously reconfigure hardware controls offers increased flexibility and responsiveness. The hierarchical decomposition and models utilized were well aligned with the physical twin, as indicated by the maximum deviations between the developed digital twin hierarchy and the hardware.
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Understanding Inductive Bias in Machine LearningSUTEJAS
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A CONSENSUS MODEL FOR GROUP DECISION MAKING WITH HESITANT FUZZY INFORMATION
1. A CONSENSUS MODEL FOR GROUP DECISION MAKING
WITH HESITANT FUZZY INFORMATION
Abstract. This article presents a more improved consensus-based method for
dealing with multi-person decision making (MPDM) that uses hesitant fuzzy
preference relations (HFPR’
s) that aren’
t in the usual format. We proposed
a Lukasiewicz transitivity (TL-transitivity)-based technique for establishing
normalised hesitant fuzzy preference relations (NHFPR’
s) at the most essen-
tial level, after that, a model based on consensus is constructed. After that, a
transitive closure formula is created in order to build TL -consistent hesitant
fuzzy preference relations (HFPR’
s) and symmetrical matrices. Afterwards,
a consistency analysis is performed to determine the degree of consistency of
the data given by the decision makers (DMs), as a result, the consistency
weights must be assigned to them. After combining consistency weights and
preset(prede…ned) priority weights, the …nal priority weights vector of DMs
is obtained (if there are any). The consensus process determines either data
analysis and selection of a suitable alternative should be done directly or exter-
nally. The enhancement process aims to improve the DM’
s consensus measure,
despite the implementation of an indicator for locating sluggish points, in the
circumstance that an unfavorable agreement is achieved. Finally, a compari-
son case demonstrates the relevance and e¤ectiveness of the proposed system.
The conclusions indicate that the suggested strategy can provide insight into
the MPDM system.
1. Introduction
Decision-making is an essential component of human existence. Several of them
urge decision-makers to make "rational" or "great" judgments [1] based on a set of
criteria for assessing particular possibilities. When selecting a preferences possibil-
ity in practical domains with a set of criteria that varies and may be classi…ed, there
is frequently a critera con‡
ict [2]. Multi-criteria decision support approaches are
often used for decision makers to evaluate choice options. One way decision support
is implemented is as a means to evaluate the use of environmental, economic, and
ecological factors.
Multi-person decision making, also referred to as MPDM, is an important method
for achieving optimal choice results in modern society. However, given varying levels
of expertise and interpretation, DM’
s contributions to the evaluation will vary de-
pending on their abilities. This therefore presents a challenge when trying to come
together and agree on a conclusion. This is a key challenge in the decision-making
process as it begins with assessing, given that decisions are typically best suited
to many di¤erent levels of consideration. One of the di¢ culties involved with con-
sensus decision-making is achieving unanimous and acceptable outcomes. Since a
Key words and phrases. Fuzzy preference relation (FPR), Hesitant fuzzy preference relation
(HFPR), Additive Transivity.
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
1
DOI : 10.5121/ijfls.2022.12401
SYEDA MIFZALAH BUKHARI, ATIQ-UR REHMAN AND MARIA BIBI
Department of Basic Sciences, University of Engineering and Technology Taxila, Pakistan
2. GDM is a consensus-driven process, various strategies for reaching an e¤ective con-
sensus have been posited and investigated, resulting in an excessive percentage of
data. Zhang et al. [3] have developed a cost-e¤ective model for maximum support
degree consensus processing, which can also be applied for reluctant information
and linguistic judgments where the degree of certainty is low. Li et al. [4] proposed
an e¤ective interactive technique for achieving consensus at a low and unpredictable
cost, …xing communication problems between human participants. A probabilistic
hesitant fuzzy preference relation is a type of family of decision problems in which
each member has its own associated rate of greater or less preference. Li and Wang
[5] presented an automatic iterative approach to obtain a consensus level. Tian and
Wang et al. and Zhang et al. [6, 7] developed consensus-reaching models of human
behaviour, as did Herrera-Viedma et al. [8], who studied model analysis in fuzzy
environments.
They used a consensus model with heterogeneous large-scale GDM with satisfac-
tion and individual concerns to examine how individuals interact with one another.
The hesitant fuzzy preference relation (HFPR) concept created by Xia and Xu
[9] is currently being employed in MPDM as an e¢ cient and simple approach for
exchanging alternative facts across groups of DM’
s. The consensus-building mech-
anism, which is based on preference relations, is regularly utilized as a apparatus
in MPDM strategies. The fuzzy preference relation (HFPR) concept made by Xia
and Xu is as of now being used as an pro…cient and basic instrument for a gather
of DMs to trade elective actualities. Many academics have explored the HFPR
suggested in [9] in the context of GDM [12, 13, 14], but signi…cant disagreements
persist, for example, while o¤ering the decision degree to which an alternative x1 is
superior to another alternative x2 for a group of three DMs. If none of the DMs are
able to agree on their appraisal, the preferred degree of x1 to x2 can be a set made
up of their combined judgements expressed as the hesitant fuzzy element (HFE).
The HFPR has the immediate bene…t of providing the DMs with a set of values
displaying the outcomes of the evaluation. However, the HFEs supply a limited
amount of components, which might make reaching an agreement di¢ cult. Most
consensus models, for example, are focused on calculating the distance between two
HFPRs, and determining an e¤ective distance between them is quite challenging
[15].
Many scholars have created various ways for obtaining the priority weight vector,
as well as consensus reaching models . Zhu et al. [16] were the …rst to propose a and
b normalisation procedures. The normalization-based strategy demanded that any
two HFEs have the same amount of elements. This strategy was highly regarded
by a number of decision-making academics. Zhang and Wu [17] developed goal
programming models for the incomplete hesitant multiplicative preference relation
(HFPR) and estimated the priority weight vectors using a and b normalisation
approaches. Meng et al. [18] developed a unique consistency technique for hesitant
multilicative preference relations, which yielded the hesitant fuzzy priority weight
vector. Zhang et al. [19] established various preference relations based on q-rung
orthopair fuzzy sets and studied a method for extracting priority weights from such
relations. Since many researchers have been compelled to use these two procedures
inde…nitely, a plethora of other normalisation methods have been developed. For
example, Xu et al. [20] created a consensus model for tackling water allocation
management problems using an additive consistency-based normalising technique.
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
2
3. Because of their limited competence and experience, DMs may struggle to construct
entire preference connections during paired judgments on alternatives. Approaches
that aid in the management of HFPRs with insu¢ cient information are required.
Zhang et al. [21] suggested a technique for guessing missing HFPR components.
Khalid and Beg [22] suggested an algorithm for the DMs that makes use of a hesitant
upper bound condition. In paired evaluations of DM’
s preferences, the consistency
of fuzzy preference relations (HFPR) is crucial in the decision-making process.
The distance metric between normalised HFPR and consistent HFPR is crucial in
determining the consistency degree of HFPR. Zhu et al. [23] developed a regression
approach and methodology for transforming HFPR into a fuzzy preference relation
with the maximum level of consistency.
In this paper, we de…ne additive reciprocity which is an e¤ect way to calcu-
late the DM’
s in the MPDM problems. Additive reciprocity is more su¢ cient ans
easy method to determine the unknown and missing values. This work proposes a
consensus-based solution for dealing with the MPDM problem utilising consistent
HFPRs. The authors present an enhanced approach for suggesting agreement in
group decision making based on TL-consistency in the context of HFPRs. They
also suggest a technique for accelerating the execution of a higher consensus level
on an easy path. When an FPR has missing preferences, the proposed technique
estimates more appropriate and consistent values. The attribute of consistency is
linked to the transitivity property, for which numerous relevant forms or conditions
have been proposed. In the …rst phase, we use the TL-transitivity characteristic
to assess the missing preferences of IFPRs. Then, we propose modi…ed consistency
matrices of experts that must meet TL-consistency. The experts are assigned a
level of relevance based on accuracy weights combined with con…dence weights.
A new approach for normalising the HFPRs is developed using additive reci-
procity and then extended to the MPDM issue utilising consistency and consensus
metrics. Section 4 includes a comparison example to evaluate the e¢ cacy of the
suggested strategy. This text is arranged as follows: in Section 2, some fundamental
de…nitions are presented to assist the reader in understanding the work; in Section
3, a novel process is proposed and its e¢ ciency is evaluated. Section 5 compares
the …ndings achieved using our suggested approach to those found in the literature.
The …nal part has some conclusions.
2. Preliminaries
A fuzzy set is a notion established by L. A. Zadeh [24] in 1965 to describe how
an item is more or less tied to a certain category to which we desire to adapt. Some
basic information is provided in this part to assist everyone understand the topic
better.
De…nition 1. Fuzzy Set [24]:The fuzzy set is de…ned as follows: If X is a discourse
universe and x is a speci…c element of X, then a fuzzy set A de…ned on X can be
expressed as a collection of ordered pairs A = f(x; A(x)); x 2 Xg: As part of the
membership function A : X ! [0; 1], the degree to which x relates to A is denoted
as A(x).
De…nition 2. Hesitant Fuzzy Set [25]:Let X represent a universal set. An HFS
on X is de…ned as a function that returns a subset of [0; 1] when applied to X. The
membership degree of x 2 X is represented by this value, which is referred to as the
hesitant fuzzy element (HFE).
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
3
4. De…nition 3. Fuzzy Preference Relation [26]: If the set of alternatives A =
fA1; A2; ::::; Ang exists, then the fuzzy preference relation U on A A with the
requirement uij 0; uij +uji = 1 exists, is called additive reciprocity [27]; i; j =
1; 2; ::::; n; the degree to which the option Ai is prior to the alternative Aj is denoted
by uij: Ai and Aj, represented by Ai Aj are indi¤erence at uij = 0:5 ; 0 uij <
0:5 denotes that Aj is preferable over Ai which is indicated by Aj Ai; the lower
the value of uij, the better, the stronger the preference for Aj over Ai, the better;
0:5 < uij 1 denotes that Ai is preferable to Aj, which is symbolised by Ai Aj,
the greater uij’
s value, the higher the preference for Ai over Aj, the better. It should
be emphasised that in a fuzzy preference relation, the value uij is a number between
0 and 1.
De…nition 4. Hesitant fuzzy preference relation [28]:let A = fA1; A2; ::::; Ang is a
…xed set, then a matrix H = (hij)n n @ A A presents a hesitant fuzzy preference
relation H on A, where hij = fhij j = 1; 2; ::::lhij g is an HFE re‡ecting all the
possible degrees to which Ai is preferred over Aj, in hij hij is the th element,
the number of values in hij is represented by lhij
. Furthermore, hij must meet the
following requirements:
8
<
:
hij + hji = 1; i; j = 1; 2; :::; n
hii = f0:5g; i = 1; 2; ::::; n
lhij = lhji ; i; j = 1; 2; :::; n
9
=
;
De…nition 5. Incomplete Fuzzy Preference Relation [11]:If U = (uij)n n is a
preference relation, then U is referred to as a incomplete fuzzy preference relation,
if the DM is unable to provide some of its elements, it is represented by the unknown
number x, and the DM will be able to o¤er the remaining.
De…nition 6. Additive Transitivity:if 8 i; k; j 2 X holds, then R is known as
additive transitive:
R(x; z) = R(x; y) + R(y; z) 0:5
De…nition 7. ×
ukasiewicz Transitivity: U is said to be TL-transitive if it holds
8 i; k 6= j 2 f1; 2; :::; ng : uik max(uij + ujk 1; 0):
De…nition 8. Consistent Fuzzy Prefrence Relation:A Fuzzy Prefrence Relation U
is said to be TL-transivity(consistent), if for 8 i; k 6= j 2 f1; 2; :::; ng : uik
max(uij + ujk 1; 0)(TL-transivity) is satis…ed.
3. Methodology
Throughout this section, we o¤ered a superior technique for dealing with MPDM
issues using HFPRs, which included the following phases: normalisation, consis-
tency measures, consensus measures, consensus enhancing process, allocating pri-
ority weights to DMs, and selection process.
3.1. Normalization. Within this part, it is proposed that a new approach for nor-
malising HFPRs be developed, because for any two hesitant fuzzy preference values
(HFPV s), hij and hlm, jhijj 6= jhlmj for i; j; l; m 2 f1; 2; ::::; ng in the majority
of cases, Sets of pairwise comparisons with their cardinalities at the ijth and lmth
places are represented by jhijj & jhlmj. We use additive reciprocity to discover the
unknown preferences of IFPRs in the …rst stage. Regarding the normalising of the
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
4
5. given HFPRs, we propose a new method for calculating the components that will
be added to HFPVs. Other intermediate values cannot be added to the estimated
element since it is just the maximum or lowest entry of HFPV. The suggested tech-
nique is based on additive reciprocity, in which we generate the incomplete fuzzy
preference relation(s) IFPRs using unknown preference values for the components
to be added.
3.2. Determine Missing Values. An IFPR based on TL-consistency can only
be completed if each option among the known preference values is investigated at
least once. As a result, the system must request that the expert create a su¢ cient
number of preferences, with each possibility being examined at least once in order
for the IFPR to become a complete FPR. The sequence in which the missing
preference values are measured has an e¤ect on the …nal outcome. For the purpose
of constructing the unknown or missing preference values in an IFPR R = (rij)n n,
the below mentioned sets are used to denote the alternative’
s pairs for known and
unknown or missing preference values
Ke = f(i; j)jrij is known valueg;
(3.1)
Ue = f(i; j)jrij is unknown valueg;
(3.2)
where rij 2 [0; 1] are the preference values of ai over aj, rij + rji = 1 =) rii =
0:5 8 i 2 f1; 2; ::::; ng. As a result, based on TL-transitivity rik max (rik + rkj
1; 0), to estimate the unknown preference value rij of alternative ai over alternative
aj, the following set can be de…ned.
(3.3) Eij = fk 6= i; jj(i; k) 2 Ke; (k; j) 2 Ke and (i; j) 2 Ueg
for i; j; k 2 f1; 2; 3; :::; ng. Using the Equation (3.3), the …nal value of rij is calcu-
lated as follows:
(3.4) rij =
avek2Eij
(max(rik + rkj 1; 0)); if jEijj 6= 0
0:5; otherwise
and
(3.5) rji = 1 rij (additive reciprocity)
Finally, the entire FPR R = (rij)n n is produced. Now, two additional sets of
known and unknown elements, Ke and Ue, are de…ned as follows:
(3.6) Ke = Ke [ f(i; j)g; and Ue = Ue f(i; j)g
As a result, a normalised hesitant fuzzy preference relation (NHFPR) H = (hij)n n
with
hij + hji = 1; hij = fhij j = 1; 2; :::; jhijjg for jhijj = jhjij
is constructed. Because of the growth in complexity, there are several decision-
making procedures that occur in multi-person situations in the real world and
because of the unpredictability of the socioeconomic environment, it is more di¢ cult
for a single decision maker can assess all of the interconnected components of a
decision-making challenge.
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
5
6. 3.3. Consistency Analysis. Some consistency measurements, such as the amount
of consistency between two alternatives, the degree of consistency among alterna-
tives, and HFPR’
s level of consistency, are speci…ed in this subsection. The term
consistency index(CI) refers to the degree of consistency with a value between 0
and 1. Assume Hq is the HFPR for the decision maker Dq(1 q l), then after
receiving the NHFPR H q
, The following transitive closure formula may be used
to obtain TL-consistent HFPR ~
H q
:
(3.7) ~
h q
ij = max
k6=i;j
(h q
ij ; max(h q
ik ; h q
kj 1; 0)) ; ~
h q
ij + ~
h q
ji = 1
where h q
ij = fhij j = 1; 2; :::; jhijjg. After analysing the distance between them
in the following manner, we can calculate the HFPR H q
consistency level based
on its similarity to the corresponding TL-consistency ~
H q
.
1. TL consistency index(TLCI) for a pair of alternatives ranked as follows:
(3.8) TLCI(h q
ij ) = 1
1
jhijj
jhij j
X
=1
d( h q
ij ; ~
h q
ij )
where d( h q
ij ; ~
h q
ij ) denotes the distance obtained by d( h q
ij ; ~
h q
ij ) = j h q
ij
~
h q
ij j: The greater the level of TLCI(h q
ij ), the more consistent h q
ij is in comparison
to the other HFPVs when it comes to the options ai and aj.
2. TLCI for alternatives ai, 1 i n,as follows:
(3.9) TLCI(ai) =
1
2(n 1)
n
X
j=1;j6=i
(TLCI (h q
ij ) + TLCI(h q
ji ) )
with TLCI(ai) 2 [0; 1]. If TLCI(ai) = 1, then the alternative ai preference values are
totally consistent; on the other hand, the lower TLCI(ai), the more inconsistency
there is in these preference values.
3. Finally, TLCI against NHFPR the average operator is used to assess H q
:
(3.10) TLCI(H q
) =
1
n
n
X
i=1
TLCI(ai)
with TLCI(H q
) 2 [0; 1]. If TLCI(H q
) = 1, NHFPR H q
is totally consistent, if
TLCI(H q
) is less, H q
is more inconsistent. Equation (3.10) assigns DM Dq to
the consistency index, however the global consistency index(CI) may be calculated
using the average operator and is provided as:
(3.11) CI =
1
l
l
X
q=1
TLCI(H q
)
with CI 2 [0; 1]. The TLCI is calculated in three steps, each comprising Equa-
tions (3.8)-(3.10), Experts who produced the HFPR with better consistency indices
should be given more weights. As a result, the following relationship may be used
to assign consistency weights to experts:
(3.12) Cw(Dq) =
TLCI(H q
)
l
X
q=1
TLCI(H q)
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
6
7. with Cw(Dq) 2 [0; 1] &
l
X
q=1
Cw(Dq) = 1:
3.4. Consensus Analysis. Some levels for estimating global consensus among
decision makers are de…ned in this subsection. It is critical to determine the amount
of consensus among decision makers after examining NHFPRs H q
; q = 1; 2; :::; l.
After aggregating the similarity matrices S
qr
= (sqr
ij )n n for each pair of decision
makers (Dq; Dr)(q = 1; 2; :::; l 1; r = q + 1; :::; l), S = (sij)n n is a collective
similarity matrix that may be built as follows:
(3.13) S = (sij)n n = (
2
l(l 1)
l 1
X
q=1
l
X
r=q+1
(1
1
jhijj
jhij j
X
=1
d( h q
ij ; h r
ij )))n n
where 1 1
jhij j
jhij j
X
=1
d( h q
ij ; h r
ij ) = sqr
ij & d( h q
ij ; h r
ij ) = j h q
ij h r
ij j; f =
1; 2; :::; jhijjg: The following levels are used to determine the degree of global con-
sensus among decision-makers:
1. The degree of consensus on a pair of alternatives (ai; aj)
(3.14) cdij = sij
2. The degree of consensus on alternatives ai, as stated by CDi:
(3.15) CDi =
1
2(n 1)
n
X
j=1;j6=i
(sij + sji)
3. The degree of consensus on the relation represented by CR is speci…ed at the
third level to determine the global consensus degree among all DMs:
(3.16) CR =
1
n
n
X
i=1
CDi
If all specialists reach a level of global consensus, a comparison with the thresh-
old consensus degree is required, the nature of the problem is typically pre-
determined. If CR is achieve, it means that there has been a su¢ cient level
of consensus obtained, and the process of decision-making may begin. Aside from
that, the consensus degree is unstable, and experts are being pressed to alter their
preferences.
3.5. Enhancement Mechanism. The enhancement mechanism acts as a mod-
erator in the consensus-building process, providing decision makers with detailed
information to help them improve their results. In case of inadequate consensus
level, we must determine the places where preference values will be updated, so
that decision-makers can attain an appropriate level of consensus In this regard,
the following is a de…nition of an identi…er:
(3.17) Iq
= f(i; j)j cdij < CR & hq
ij is a known valueg
Once the positions have been established using an identi…er, the enhancement mech-
anism recommends that the relevant DM Dq augment the element hq
ij of HFPV hq
ij,
if it is less than the mean value h q
ij;ave of the participant’
s opinions, or to decline if
the value is more than the mean, and to remain the same if the value is equal to the
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
7
8. mean. To automatically improve the consensus, the DMs would not have to give
their updated components in the automated procedure. In such a case, the new
element hq
ij;new may be evaluated using the following equation, new for cdij < CR:
(3.18) hq
ij;new = hq
ij + (1 )h q
ij;ave
where 2 [0; 1] is known as the optimization parameter. The new evaluated values
will undoubtedly be closer to the mean values than the previous ones,and so the
degree of consensus will increase.
3.6. Rating of Decision Makers. To analyse decision makers’…nal priority eval-
uations, emerging consistency weights and prede…ned priority weights are employed,
which are as follows:
(3.19) w(Dq) =
wq Cw(Dq)
l
X
q=1
wq Cw(Dq)
where wq; 1 q l; denotes the decision maker’
s prede…ned priority weights, while
l
X
q=1
w(Dq) = 1: If the DMs do not use prede…ned priority weights, then, as the …nal
priority rating, their consistency weights will be used.
3.7. Aggregated NHFPR. On a regular basis, the preference level associated
with each DM may be weighted di¤erently. After reviewing decision maker’
s priority
ratings, their views are to be consolidated into a global one. Using the weighted
average operator, we create the collective consistent NHFPR H c
as follows:
(3.20) H c
= (h c
ij )n n = (
l
X
q=1
w(Dq) ~
h q
ij )n n; for1 i n; 1 j n:
3.8. Ranking of Alternatives. When the DMs attain an appropriate degree of
consensus, the process of ranking the alternatives begins and the best one is chosen.
The ranking value v(ai) for alternative ai; (i = 1; 2; :::n); is de…ned in this context,
as follows:
(3.21) v(ai) =
2
n(n 1)
n
X
j=1;j6=i
(
1
jh c
ij j
jh c
ij j
X
=1
h c
ij )
with
n
X
i=1
v(ai) = 1:
4. Comparative Example
A bank wants to put a particular amount of money into the best option. To
reduce the risks of making judgments in this highly competitive and fast-paced
industry, the company’
s leader enlists the assistance of a group of experts in the
decision-making process in the hopes of reaching a consensus. The following is a
panel with three options:
a1 is the automobile industry,
a2 is the food industry,
a3 is the computer industry
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
8
9. Three specialists have been consulted,Dq; q = 1; 2; 3 from three consulting de-
partments is tasked with assessing the three options. ai; i = 1; 2; 3:Following pair-
wise comparisons, the DMs Dq; q = 1; 2; 3 o¤er the following HFPRs Hq
; q = 1; 2; 3,
respectively with threshold consensus level = 0:8.
H1
=
2
6
6
4
f0:5g f0:3; 0:5g f0:5; 0:6; 0:7g f0:4g
f0:7; 0:5g f0:5g f0:4; 0:6g f0:6; 0:7g
f0:5; 0:4; 0:3g f0:6; 0:4g f0:5g f0:6; 0:8g
f0:6g f0:4; 0:3g f0:4; 0:2g f0:5g
3
7
7
5
H2
=
2
6
6
4
f0:5g f0:7; 0:6g f0:8; 0:6g f0:4g
f0:3; 0:4g f0:5g f0:8; 0:7; 0:5g f0:4; 0:3g
f0:2; 0:4g f0:2; 0:3; 0:5g f0:5g f0:7; 0:6g
f0:6g f0:6; 0:7g f0:3; 0:4g f0:5g
3
7
7
5
H3
=
2
6
6
4
f0:5g f0:7; 0:6; 0:4g f0:6g f0:4; 0:3g
f0:3; 0:4; 0:6g f0:5g f0:5g f0:6g
f0:4g f0:5g f0:5g f0:9; 0:5; 0:4g
f0:6; 0:7g f0:4g f0:1; 0:5; 0:6g f0:5g
3
7
7
5
Normalization:
Equation (3.1)–
(3.6) were utilised to generate NHFPRs in order to normalise the
provided data
H 1
=
2
6
6
4
f0:5g f0:3; 0:5; 0:9g f0:5; 0:6; 0:7g f0:4; 0:3; 0:4g
f0:7; 0:5; 0:1g f0:5g f0:4; 0:6; 0:6g f0:6; 0:7; 0:3g
f0:5; 0:4; 0:3g f0:6; 0:4; 0:4g f0:5g f0:6; 0:8; 0g
f0:6; 0:7; 0:6g f0:4; 0:3; 0:7g f0:4; 0:2; 1g f0:5g
3
7
7
5
H 2
=
2
6
6
4
f0:5g f0:7; 0:6; 0:1g f0:8; 0:6; 0:6g f0:4; 0:1; 0:4g
f0:3; 0:4; 0:9g f0:5g f0:8; 0:7; 0:5g f0:4; 0:3; 0:2g
f0:2; 0:4; 0:4g f0:2; 0:3; 0:5g f0:5g f0:7; 0:6; 0:6g
f0:6; 0:9; 0:6g f0:6; 0:7; 0:8g f0:3; 0:4; 0:4g f0:5g
3
7
7
5
H 3
=
2
6
6
4
f0:5g f0:7; 0:6; 0:4g f0:6; 0; 0:6g f0:4; 0:3; 0g
f0:3; 0:4; 0:6g f0:5g f0:5; 0; 0:2g f0:6; 0; 0:6g
f0:4; 1; 0:4g f0:5; 1; 0:8g f0:5g f0:9; 0:5; 0:4g
f0:6; 0:7; 1g f0:4; 1; 0:4g f0:1; 0:5; 0:6g f0:5g
3
7
7
5
Consistency Analysis:
The HFPR’
s consistency levels as stated by decision makers were measured using
expressions (3.7)–
(3.12).
~
h q
ij = max
k6=i;j
(h q
ij ; max(h q
ik ; h q
kj 1; 0)) ; ~
h q
ij + ~
h q
ji = 1
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
9
11. Cw(D1) = 0:3384; Cw(D2) = 0:3232
Cw(D3) = 0:3384
Now
l
X
q=1
Cw(Dq) = 1:
Consensus measures:
s12
ij =
2
6
6
4
1 0:5667 0:8667 0:9333
0:5667 1 0:8 0:7667
0:8667 0:8 1 0:7
0:9333 0:7667 0:7 1
3
7
7
5 ; s13
ij =
2
6
6
4
1 0:6667 0:7333 0:8667
0:6667 1 0:6333 0:6667
0:7333 0:6333 1 0:6667
0:8667 0:6667 0:6667 1
3
7
7
5
s23
ij =
2
6
6
4
1 0:9 0:7333 0:8
0:9 1 0:5667 0:7
0:7333 0:5667 1 0:8333
0:8 0:7 0:8333 1
3
7
7
5
Similarity matrix
S =
2
6
6
4
1 0:7111 0:7778 0:8667
0:7111 1 0:6667 0:7111
0:7778 0:6667 1 0:7333
0:8667 0:7111 0:7333 1
3
7
7
5
(i). Consensus degree on a pair of alternatives (ai; aj) using the similarity matrix
S :
cdij = sij; i; j = 1; 2; 3; 4
(ii). Consensus degree on alternatives (ai)
CD1 = 0:7852; CD2 = 0:6963;
CD3 = 0:7259; CD4 = 0:7704;
(iii). Consensus degree on the relation
CR = 0:7445
Final weights of DMs:
The consistency weights Cw(Dq); q = 1; 2; 3 will be utilised as the DMs …nal
weights by using (3.19),because no pre-determined weights are involved.As a result,
w(D1) = 0:3384; w(D2) = 0:3232
w(D3) = 0:3384;
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
11
12. Collective NHFPR construction :
After applying (3.20), we get the collective NHFPR H c
H c
=
2
6
6
4
f0:5g f0:55; 0:56; 0:51g f0:63; 0:39; 0:63g f0:47; 0:3; 0:27g
f0:45; 0:44; 0:49g f0:5g f0:57; 0:43; 0:43g f0:56; 0:33; 0:38g
f0:37; 0:61; 0:37g f0:43; 0:57; 0:57g f0:5g f0:73; 0:63; 0:15g
f0:53; 0:7; 0:73g f0:44; 0:67; 0:62g f0:27; 0:37; 0:85g f0:5g
3
7
7
5
Final Ranking of alternatives:
The equation (3.21) is used to get the …nal ranking order of the alternatives after
analysing the ranking values.
v(a1) = 0:2394; v(a2) = 0:2267; v(a3) = 0:2461 & v(a4) = 0:2878
n
X
i=1
v(ai) = 1:As a result,the preferred order of alternatives is
a4 a3 a1 a2
Enhancement mechanism:
As
0:7445 = CR < (given = 0:8)
As a result,DMs must alter their preferences with the help of (3.17).The following
are the mean values of the expert’
s preferences:
Have =
2
6
6
4
f0:5g f0:57; 0:57; 0:47g f0:63; 0:4; 0:63g f0:4; 0:23; 0:27g
f0:43; 0:43; 0:53g f0:5g f0:57; 0:43; 0:43g f0:53; 0:33; 0:37g
f0:37; 0:6; 0:37g f0:43; 0:57; 0:57g f0:5g f0:73; 0:63; 0:33g
f0:6; 0:77; 0:73g f0:47; 0:67; 0:63g f0:27; 0:37; 0:67g f0:5g
3
7
7
5
The identi…er (3.17) now o¤ers the following set of options for improving relevant
preference values.
Iq
= f(1; 2); (2; 1); (2; 3); (3; 2) ; (2; 4); (4; 2); (3; 4) ; (4; 3)g:
Assume that the DMs using (3:18) were pleased with the suggestions and improved
their preference relations as a result:
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
12
13. H1
new =
2
6
6
4
f0:5g f0:435; 0:535g f0:5; 0:6; 0:7g f0:4g
f0:565; 0:465g f0:5g f0:485; 0:515g f0:565; 0:515g
f0:5; 0:4; 0:3g f0:515; 0:485g f0:5g f0:665; 0:715g
f0:6g f0:435; 0:485g f0:335; 0:285g f0:5g
3
7
7
5
H2
new =
2
6
6
4
f0:5g f0:635; 0:585g f0:8; 0:6g f0:4g
f0:365; 0:415g f0:5g f0:685; 0:565; 0:465g f0:465; 0:315g
f0:2; 0:4g f0:315; 0:435; 0:535g f0:5g f0:715; 0:615g
f0:6g f0:535; 0:685g f0:285; 0:385g f0:5g
3
7
7
5
H3
new =
2
6
6
4
f0:5g f0:635; 0:585; 0:435g f0:6g f0:4; 0:3g
f0:365; 0:415; 0:565g f0:5g f0:535g f0:565g
f0:4g f0:465g f0:5g f0:815; 0:565; 0:365g
f0:6; 0:7g f0:435g f0:185; 0:435; 0:635g f0:5g
3
7
7
5
Normalization:
Equation (3.1)–
(3.6) were utilised to generate NHFPRs in order to normalise the
provided data
H 1
new =
2
6
6
4
f0:5g f0:435; 0:54; 0:19g f0:5; 0:6; 0:7g f0:4; 0:18; 0:4g
f0:56; 0:46; 0:81g f0:5g f0:48; 0:51; 0:51g f0:56; 0:515; 0:21g
f0:5; 0:4; 0:3g f0:52; 0:49; 0:49g f0:5g f0:665; 0:715; 0g
f0:6; 0:82; 0:6g f0:44; 0:485; 0:79g f0:335; 0:285; 1g f0:5g
3
7
7
5
H 2
new =
2
6
6
4
f0:5g f0:6; 0:59; 0:1g f0:8; 0:6; 0:6g f0:4; 0:11; 0:4g
f0:4; 0:41; 0:9g f0:5g f0:68; 0:565; 0:465g f0:46; 0:31; 0:17g
f0:2; 0:4; 0:4g f0:32; 0:435; 0:535g f0:5g f0:73; 0:62; 0:62g
f0:6; 0:89; 0:6g f0:54; 0:69; 0:83g f0:28; 0:38; 0:38g f0:5g
3
7
7
5
H 3
new =
2
6
6
4
f0:5g f0:6; 0:585; 0:44g f0:6; 0; 0:6g f0:4; 0:3; 0g
f0:4; 0:415; 0:56g f0:5g f0:535; 0; 0:18g f0:565; 0; 0:565g
f0:4; 1; 0:4g f0:465; 1; 0:82g f0:5g f0:8; 0:56; 0:365g
f0:6; 0:7; 1g f0:435; 1; 0:435g f0:2; 0:44; 0:635g f0:5g
3
7
7
5
Consistency Analysis:
The HFPR’
s consistency levels as stated by decision makers were measured using
expressions (3.7)–
(3.12).
~
h q
ij = max
k6=i;j
(h q
ij ; max(h q
ik ; h q
kj 1; 0)) ; ~
h q
ij + ~
h q
ji = 1
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
13
15. Now
l
X
q=1
Cw(Dq)new = 1:
Consensus measures:
s12
ijnew
=
2
6
6
4
1 0:9 0:8667 0:9767
0:9 1 0:9 0:8867
0:8667 0:9 1 0:745
0:9767 0:8867 0:745 1
3
7
7
5 ; s13
ijnew
=
2
6
6
4
1 0:835 0:7333 0:8267
0:835 1 0:7 0:71
0:7333 0:7 1 0:7783
0:8267 0:71 0:7783 1
3
7
7
5 ;
s23
ijnew
=
2
6
6
4
1 0:9017 0:7333 0:8033
0:9017 1 0:6667 0:73
0:7333 0:6667 1 0:8667
0:8033 0:73 0:8667 1
3
7
7
5
Similarity matrix
Snew =
2
6
6
4
1 0:8789 0:7778 0:8689
0:8789 1 0:7556 0:7756
0:7778 0:7556 1 0:7967
0:8689 0:7756 0:7967 1
3
7
7
5
(i). Consensus degree on a pair of alternatives (ai; aj) based on the similarity
matrix S :
cdij = sij; i; j = 1; 2; 3; 4
(ii). Consensus degree on alternatives (ai)
CD1 new = 0:8419; CD2 new = 0:8034;
CD3 new = 0:7767; CD4 new = 0:8137;
(iii). Consensus degree on the relation
CRnew = 0:8089
Final weights of DMs:
The consistency weights Cw(Dq); q = 1; 2; 3 will be utilised as the DMs …nal
weights by using (3.19),because no pre-determined weights are involved. As a result,
w(D1)new = 0:3337; w(D2)new = 0:3312;
w(D3)new = 0:3351;
Collective NHFPR construction :
After applying (3.20),we get the collective NHFPR H c
.
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
15
16. H c
new =
2
6
6
4
f0:5g f0:57; 0:56; 0:28g f0:631; 0:4; 0:64g f0:4; 0:28; 0:26g
f0:43; 0:44; 0:72g f0:5g f0:57; 0:36; 0:39g f0:52; 0:27; 0:34g
f0:369; 0:6; 0:36g f0:43; 0:64; 0:61g f0:5g f0:73; 0:62; 0:33g
f0:6; 0:72; 0:74g f0:48; 0:73; 0:66g f0:27; 0:38; 0:67g f0:5g
3
7
7
5
Final Ranking of alternatives:
The equation (3.21) is used to get the …nal ranking order of the alternatives after
analysing the ranking values.
v(a1)new = 0:2234; v(a2)new = 0:2244; v(a3)new = 0:2605 and v(a4)new = 0:2917
n
X
i=1
v(ai) = 1:As a result,the preferred order of alternatives is
a4 a3 a2 a1
5. Comparison
By comparing our results to those of Xu et al. [29] based on consistency measure,
consensus measure, and …nal ranking, we clearly verify the suggested technique. Ac-
cording to Xu et al. [29], the initial consistency levels, consensus level, and ultimate
ranking of alternatives are as follows: CR = 0:7554; a4 a3 a2 a1 respectively.
Additive reciprocity is incorporated into our suggested strategy to evaluate the
HFPV’
s unidenti…ed components throughout the normalisation process and create
the consistent HFPRs in accordance.
TABLE: The results were compared of the Xu et al. results and the suggested
method
Methods TLCI(H 1
) TLCI(H 2
) TLCI(H 3
) CR Ranking Order
Xu et al: [29] 0:9445 0:8722 0:9501 0:7554 a4 a3 a2 a1
Before Enhancement 0:9945 0:95 0:9945 0:7745 a4 a3 a1 a2
After Enhancement 0:9925 0:9852 0:9969 0:8089 a4 a3 a2 a1
6. Conclusions
A consensus-based technique for dealing with the MPDM problem using consis-
tent HFPRs is proposed in this paper. In this regard, the notion of HFPRs was
derived from the work of Xu [20], and we propose an e¤ective additive reciprocity-
based strategy for normalising HFPRs.
The above example demonstrates a step-by-step procedure for normalising the
HFPR. Following a consistency study, DMs were assigned consistency weights. To
carry greater weight in the aggregation process, DMs with a high level of consis-
tency should be given larger weights. Furthermore, an improvement Mechanism
is provided to aid in the implementation of a higher degree of agreement on a
straightforward path. When the DMs have reached an adequate level of consensus,
International Journal of Fuzzy Logic Systems (IJFLS) Vol.12, No.1/2/3/4, October 2022
16
17. the technique moves on to the selection step, which includes methods for aggregat-
ing and ranking to determine the best solution. A comparative case is created to
highlight the feasibility and e¢ cacy of the proposed method. The …ndings provide
us a better understanding of the MPDM process.
7. Future Work
The main future work of this problem is that we can extend this problem by
utilizing dual hesitant fuzzy set and by applying aggregation operator we can make
this problem more compact. This problem can also be extended by using triangular
fuzzy number.
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Current address: Department of Mathematics, COMSATS University Islamabad at Lahore,
Lahore 5400, Pakistan
E-mail address: smbukhari735@gmail.com
Department of Mathematics, COMSATS University Islamabad at Lahore, Lahore
5400, Pakistan
E-mail address: atiqurehman@cuilahore.edu.pk
Department of Basic Sciences, University of Engineering and Technology Taxila,
Pakistan
E-mail address: mariabibi782@gmail.com
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