n many decision situations, decision-makers face a kind of complex problems. In these decision-making
problems, different types of fuzzy numbers are defined and, have multiple types of membership functions.
So, we need a standard form to formulate uncertain numbers in the problem. Shadowed fuzzy numbers are
considered granule numbers which approximate different types and different forms of fuzzy numbers. In
this paper, a new ranking approach for shadowed fuzzy numbers is developed using value, ambiguity and
fuzziness for shadowed fuzzy numbers. The new ranking method has been compared with other existing
approaches through numerical examples. Also, the new method is applied to a hybrid multi-attribute
decision making problem in which the evaluations of alternatives are expressed with different types of
uncertain numbers. The comparative study for the results of different examples illustrates the reliability of
the new method.
A NEW APPROACH FOR RANKING SHADOWED FUZZY NUMBERS AND ITS APPLICATIONijcsit
In many decision situations, decision-makers face a kind of complex problems. In these decision-making
problems, different types of fuzzy numbers are defined and, have multiple types of membership functions.
So, we need a standard form to formulate uncertain numbers in the problem. Shadowed fuzzy numbers are
considered granule numbers which approximate different types and different forms of fuzzy numbers. In
this paper, a new ranking approach for shadowed fuzzy numbers is developed using value, ambiguity and
fuzziness for shadowed fuzzy numbers. The new ranking method has been compared with other existing
approaches through numerical examples. Also, the new method is applied to a hybrid multi-attribute
decision making problem in which the evaluations of alternatives are expressed with different types of
uncertain numbers. The comparative study for the results of different examples illustrates the reliability of
the new method.
In many decision situations, decision-makers face a kind of complex problems. In these decision-making problems, different types of fuzzy numbers are defined and, have multiple types of membership functions. So, we need a standard form to formulate uncertain numbers in the problem. Shadowed fuzzy numbers are considered granule numbers which approximate different types and different forms of fuzzy numbers. In this paper, a new ranking approach for shadowed fuzzy numbers is developed using value, ambiguity and fuzziness for shadowed fuzzy numbers. The new ranking method has been compared with other existing approaches through numerical examples. Also, the new method is applied to a hybrid multi-attribute decision making problem in which the evaluations of alternatives are expressed with different types of uncertain numbers. The comparative study for the results of different examples illustrates the reliability of the new method.
A New Hendecagonal Fuzzy Number For Optimization Problemsijtsrd
A new fuzzy number called Hendecagonal fuzzy number and its membership function is introduced, which is used to represent the uncertainty with eleven points. The fuzzy numbers with ten ordinates exists in literature. The aim of this paper is to define Hendecagonal fuzzy number and its arithmetic operations. Also a direct approach is proposed to solve fuzzy assignment problem (FAP) and fuzzy travelling salesman (FTSP) in which the cost and distance are represented by Hendecagonal fuzzy numbers. Numerical example shows the effectiveness of the proposed method and the Hendecagonal fuzzy number M. Revathi | Dr. M. Valliathal | R. Saravanan | Dr. K. Rathi"A New Hendecagonal Fuzzy Number For Optimization Problems" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-1 | Issue-5 , August 2017, URL: http://www.ijtsrd.com/papers/ijtsrd2258.pdf http://www.ijtsrd.com/mathemetics/applied-mathamatics/2258/a-new-hendecagonal-fuzzy-number-for-optimization-problems/m-revathi
The concept of an intuitionistic fuzzy number (IFN) is of importance for representing an ill-known quantity. Ranking fuzzy numbers plays a very important role in the decision process, data analysis and applications. The concept of an IFN is of importance for quantifying an ill-known quantity. Ranking of intuitionistic fuzzy numbers plays a vital role in decision making and linear programming problems. Also, ranking of intuitionistic fuzzy numbers is a very difficult problem. In this paper, a new method for ranking intuitionistic fuzzy number is developed by means of magnitude for different forms of intuitionistic fuzzy numbers. In Particular ranking is done for trapezoidal intuitionistic fuzzy numbers, triangular intuitionistic fuzzy numbers, symmetric trapezoidal intuitionistic fuzzy numbers, and symmetric triangular intuitionistic fuzzy numbers. Numerical examples are illustrated for all the defined different forms of intuitionistic fuzzy numbers. Finally some comparative numerical examples are illustrated to express the advantage of the proposed method.
Transportation Problem with Pentagonal Intuitionistic Fuzzy Numbers Solved Us...IJERA Editor
This paper presents a solution methodology for transportation problem in an intuitionistic fuzzy environment in
which cost are represented by pentagonal intuitionistic fuzzy numbers. Transportation problem is a particular
class of linear programming, which is associated with day to day activities in our real life. It helps in solving
problems on distribution and transportation of resources from one place to another. The objective is to satisfy
the demand at destination from the supply constraints at the minimum transportation cost possible. The problem
is solved using a ranking technique called Accuracy function for pentagonal intuitionistic fuzzy numbers and
Russell’s Method
AN ARITHMETIC OPERATION ON HEXADECAGONAL FUZZY NUMBERWireilla
In this paper, a new form of fuzzy number named as exadecagonal Fuzzy Number is introduced as it is not possible to restrict the membership function to any specific form. The cut of Hexadecagonal fuzzy number is defined and basic arithmetic operations are performed using interval arithmetic of cut and
illustrated with numerical examples
AN ARITHMETIC OPERATION ON HEXADECAGONAL FUZZY NUMBERijfls
In this paper, a new form of fuzzy number named as Hexadecagonal Fuzzy Number is introduced as it is not
possible to restrict the membership function to any specific form. The cut of Hexadecagonal fuzzy
number is defined and basic arithmetic operations are performed using interval arithmetic of cut and
illustrated with numerical examples.
AN ARITHMETIC OPERATION ON HEXADECAGONAL FUZZY NUMBERijfls
In this paper, a new form of fuzzy number named as Hexadecagonal Fuzzy Number is introduced as it is not
possible to restrict the membership function to any specific form. The cut of Hexadecagonal fuzzy number is defined and basic arithmetic operations are performed using interval arithmetic of cut and illustrated with numerical examples.
A NEW APPROACH FOR RANKING SHADOWED FUZZY NUMBERS AND ITS APPLICATIONijcsit
In many decision situations, decision-makers face a kind of complex problems. In these decision-making
problems, different types of fuzzy numbers are defined and, have multiple types of membership functions.
So, we need a standard form to formulate uncertain numbers in the problem. Shadowed fuzzy numbers are
considered granule numbers which approximate different types and different forms of fuzzy numbers. In
this paper, a new ranking approach for shadowed fuzzy numbers is developed using value, ambiguity and
fuzziness for shadowed fuzzy numbers. The new ranking method has been compared with other existing
approaches through numerical examples. Also, the new method is applied to a hybrid multi-attribute
decision making problem in which the evaluations of alternatives are expressed with different types of
uncertain numbers. The comparative study for the results of different examples illustrates the reliability of
the new method.
In many decision situations, decision-makers face a kind of complex problems. In these decision-making problems, different types of fuzzy numbers are defined and, have multiple types of membership functions. So, we need a standard form to formulate uncertain numbers in the problem. Shadowed fuzzy numbers are considered granule numbers which approximate different types and different forms of fuzzy numbers. In this paper, a new ranking approach for shadowed fuzzy numbers is developed using value, ambiguity and fuzziness for shadowed fuzzy numbers. The new ranking method has been compared with other existing approaches through numerical examples. Also, the new method is applied to a hybrid multi-attribute decision making problem in which the evaluations of alternatives are expressed with different types of uncertain numbers. The comparative study for the results of different examples illustrates the reliability of the new method.
A New Hendecagonal Fuzzy Number For Optimization Problemsijtsrd
A new fuzzy number called Hendecagonal fuzzy number and its membership function is introduced, which is used to represent the uncertainty with eleven points. The fuzzy numbers with ten ordinates exists in literature. The aim of this paper is to define Hendecagonal fuzzy number and its arithmetic operations. Also a direct approach is proposed to solve fuzzy assignment problem (FAP) and fuzzy travelling salesman (FTSP) in which the cost and distance are represented by Hendecagonal fuzzy numbers. Numerical example shows the effectiveness of the proposed method and the Hendecagonal fuzzy number M. Revathi | Dr. M. Valliathal | R. Saravanan | Dr. K. Rathi"A New Hendecagonal Fuzzy Number For Optimization Problems" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-1 | Issue-5 , August 2017, URL: http://www.ijtsrd.com/papers/ijtsrd2258.pdf http://www.ijtsrd.com/mathemetics/applied-mathamatics/2258/a-new-hendecagonal-fuzzy-number-for-optimization-problems/m-revathi
The concept of an intuitionistic fuzzy number (IFN) is of importance for representing an ill-known quantity. Ranking fuzzy numbers plays a very important role in the decision process, data analysis and applications. The concept of an IFN is of importance for quantifying an ill-known quantity. Ranking of intuitionistic fuzzy numbers plays a vital role in decision making and linear programming problems. Also, ranking of intuitionistic fuzzy numbers is a very difficult problem. In this paper, a new method for ranking intuitionistic fuzzy number is developed by means of magnitude for different forms of intuitionistic fuzzy numbers. In Particular ranking is done for trapezoidal intuitionistic fuzzy numbers, triangular intuitionistic fuzzy numbers, symmetric trapezoidal intuitionistic fuzzy numbers, and symmetric triangular intuitionistic fuzzy numbers. Numerical examples are illustrated for all the defined different forms of intuitionistic fuzzy numbers. Finally some comparative numerical examples are illustrated to express the advantage of the proposed method.
Transportation Problem with Pentagonal Intuitionistic Fuzzy Numbers Solved Us...IJERA Editor
This paper presents a solution methodology for transportation problem in an intuitionistic fuzzy environment in
which cost are represented by pentagonal intuitionistic fuzzy numbers. Transportation problem is a particular
class of linear programming, which is associated with day to day activities in our real life. It helps in solving
problems on distribution and transportation of resources from one place to another. The objective is to satisfy
the demand at destination from the supply constraints at the minimum transportation cost possible. The problem
is solved using a ranking technique called Accuracy function for pentagonal intuitionistic fuzzy numbers and
Russell’s Method
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AN ARITHMETIC OPERATION ON HEXADECAGONAL FUZZY NUMBERijfls
In this paper, a new form of fuzzy number named as Hexadecagonal Fuzzy Number is introduced as it is not
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number is defined and basic arithmetic operations are performed using interval arithmetic of cut and
illustrated with numerical examples.
AN ARITHMETIC OPERATION ON HEXADECAGONAL FUZZY NUMBERijfls
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A Novel Algorithm for Design Tree Classification with PCAEditor Jacotech
This document summarizes a research paper titled "A Novel Algorithm for Design Tree Classification with PCA". It discusses dimensionality reduction techniques like principal component analysis (PCA) that can improve the efficiency of classification algorithms on high-dimensional data. PCA transforms data to a new coordinate system such that the greatest variance by any projection of the data comes to lie on the first coordinate, called the first principal component. The paper proposes applying PCA and linear transformation on an original dataset before using a decision tree classification algorithm, in order to get better classification results.
This document summarizes a research paper titled "A Novel Algorithm for Design Tree Classification with PCA". It discusses dimensionality reduction techniques like principal component analysis (PCA) that can improve the efficiency of classification algorithms on high-dimensional data. PCA transforms data to a new coordinate system such that the greatest variance by any projection of the data comes to lie on the first coordinate, called the first principal component. The paper proposes applying PCA and linear transformation on an original dataset before using a decision tree classification algorithm, in order to get better classification results.
FUZZY ROUGH INFORMATION MEASURES AND THEIR APPLICATIONSijcsity
This document summarizes a research paper that proposes three new information measures for fuzzy rough sets and evaluates their applications. It begins with background on fuzzy rough sets and existing information measures. It then defines a new logarithmic information measure for fuzzy rough values and proves its validity. Another proposed information measure for fuzzy rough sets is described along with an illustration of its application. A weighted information measure for fuzzy rough sets is also discussed. The paper compares the proposed information measures to other existing ones and concludes with references.
FUZZY ROUGH INFORMATION MEASURES AND THEIR APPLICATIONSijcsity
This document summarizes a research paper that proposes three new information measures for fuzzy rough sets and evaluates their applications. It begins with background on fuzzy rough sets and existing information measures. It then defines a new logarithmic information measure for fuzzy rough values and proves its validity. Another proposed information measure for fuzzy rough sets is described along with an illustration of its application. A weighted information measure for fuzzy rough sets is also discussed. The paper compares the proposed information measures to other existing ones and concludes with references.
FUZZY ROUGH INFORMATION MEASURES AND THEIR APPLICATIONSijcsity
The degree of roughness characterizes the uncertainty contained in a rough set. The rough entropy was
defined to measure the roughness of a rough set. Though, it was effective and useful, but not accurate
enough. Some authors use information measure in place of entropy for better understanding which
measures the amount of uncertainty contained in fuzzy rough set .In this paper three new fuzzy rough
information measures are proposed and their validity is verified. The application of these proposed
information measures in decision making problems is studied and also compared with other existing
information measures.
A Fuzzy Mean-Variance-Skewness Portfolioselection Problem.inventionjournals
A fuzzy number is a normal and convex fuzzy subsetof the real line. In this paper, based on membership function, we redefine the concepts of mean and variance for fuzzy numbers. Furthermore, we propose the concept of skewness and prove some desirable properties. A fuzzy mean-variance-skewness portfolio se-lection model is formulated and two variations are given, which are transformed to nonlinear optimization models with polynomial ob-jective and constraint functions such that they can be solved analytically. Finally, we present some numerical examples to demonstrate the effectiveness of the proposed models
The Analysis of Performance Measures of Generalized Trapezoidal Fuzzy Queuing...IJERA Editor
The purpose of this research paper was to propose a method which can be utilized to determine the different types of performance measures on the basis of the crisp values for the fuzzy queuing model which has an unreliable server and where the rate of arrival, the rate of service, the rate of breakdown and the rate of repair are all expressed as the fuzzy numbers. In this case the inter arrival time, the time of service, the rates of breakdown and the rates of repair are all triangular functions and are also expressed as the Trapezoidal fuzzy numbers. The main intent is to transform the fuzzy inter arrival time, the time of service, the rates of breakdown and the rates of repair into the crisp values by using the Ranking function method. Then the crisp values are applied in the classical formulas for the performance measure. In the fuzzy environment the ranking fuzzy numbers are very helpful in making the decisions. The ranking function method is one of the most reliable method, is simpler to apply in comparison to other methods and can be utilized to solve the different types of queuing problems. In this research paper a numerical example is also provided for both the triangular and the trapezoidal fuzzy number so that a practical insight into the problem can be provided.
VARIOUS FUZZY NUMBERS AND THEIR VARIOUS RANKING APPROACHESIAEME Publication
A brief survey of this study is to identify the ranking formulas for various fuzzy numbers derived from research papers published over the past few years. This paper presents the latest results of fuzzy ranking applications very clearly and simply, as well as highlighting key points in the use of fuzzy numbers. This paper discusses the importance of pointing out the concepts of fuzzy numbers and their formulas for ranking.
The document discusses classification algorithms in machine learning. It introduces classification problems using the Iris flower dataset as an example, which contains measurements of Iris flowers to classify them into three species. It then discusses two classic classification algorithms - logistic regression and Gaussian discriminant analysis. Logistic regression uses a sigmoid function to generate predictions, while Gaussian discriminant analysis assumes a Gaussian distribution of the data. The document also demonstrates an application of these algorithms to classify handwritten digits.
International Journal of Engineering Research and Applications (IJERA) is an open access online peer reviewed international journal that publishes research and review articles in the fields of Computer Science, Neural Networks, Electrical Engineering, Software Engineering, Information Technology, Mechanical Engineering, Chemical Engineering, Plastic Engineering, Food Technology, Textile Engineering, Nano Technology & science, Power Electronics, Electronics & Communication Engineering, Computational mathematics, Image processing, Civil Engineering, Structural Engineering, Environmental Engineering, VLSI Testing & Low Power VLSI Design etc.
The document presents a method for solving fuzzy assignment problems using triangular and trapezoidal fuzzy numbers. It formulates the fuzzy assignment problem into a crisp linear programming problem that can be solved using the Hungarian method. The paper also uses Robust's ranking method to transform fuzzy costs into crisp values, allowing conventional solution methods to be applied. It aims to provide a more realistic approach to assignment problems by considering costs as fuzzy numbers rather than deterministic values.
TYPE-2 FUZZY LINEAR PROGRAMMING PROBLEMS WITH PERFECTLY NORMAL INTERVAL TYPE-...ijceronline
In this paper, the Perfectly normal Interval Type-2 Fuzzy Linear Programming (PnIT2FLP) model is considered. This model is reduced to crisp linear programming model. This transformation is performed by a proposed ranking method. Based on the proposed fuzzy ranking method and arithmetic operation, the solution of Perfectly normal Interval Type-2 Fuzzy Linear Programming model is obtained by the solutions of linear programming model with help of MATLAB. Finally, the method is illustrated by numerical examples.
Fuzzy linear programming with the intuitionistic polygonal fuzzy numbersIJECEIAES
In real world applications, data are subject to ambiguity due to several factors; fuzzy sets and fuzzy numbers propose a great tool to model such ambiguity. In case of hesitation, the complement of a membership value in fuzzy numbers can be different from the non-membership value, in which case we can model using intuitionistic fuzzy numbers as they provide flexibility by defining both a membership and a non-membership functions. In this article, we consider the intuitionistic fuzzy linear programming problem with intuitionistic polygonal fuzzy numbers, which is a generalization of the previous polygonal fuzzy numbers found in the literature. We present a modification of the simplex method that can be used to solve any general intuitionistic fuzzy linear programming problem after approximating the problem by an intuitionistic polygonal fuzzy number with n edges. This method is given in a simple tableau formulation, and then applied on numerical examples for clarity.
A LEAST ABSOLUTE APPROACH TO MULTIPLE FUZZY REGRESSION USING Tw- NORM BASED O...ijfls
A least absolute approach to multiple fuzzy regression using Tw-norm based arithmetic operations is
discussed by using the generalized Hausdorff metric and it is investigated for the crisp input- fuzzy output
data. A comparative study based on two data sets are presented using the proposed method using shape
preserving operations with other existing method.
Connectivity-Based Clustering for Mixed Discrete and Continuous DataIJCI JOURNAL
This paper introduces a density-based clustering procedure for datasets with variables of mixed type. The proposed procedure, which is closely related to the concept of shared neighbourhoods, works particularly well in cases where the individual clusters differ greatly in terms of the average pairwise distance of the associated objects. Using a number of concrete examples, it is shown that the proposed clustering algorithm succeeds in allowing the identification of subgroups of objects with statistically significant distributional characteristics.
This document discusses fuzzy logical databases and an efficient algorithm for evaluating fuzzy equi-joins. It begins with an introduction to fuzzy concepts in databases, including representing imprecise data using fuzzy sets and membership functions. It then defines a new measure for fuzzy equality that is used to define a fuzzy equi-join. The document proposes a sort-merge join algorithm that sorts relations based on a partial order of intervals to efficiently evaluate the fuzzy equi-join in two phases: sorting and joining. Experimental results are said to show a significant improvement in efficiency when using this algorithm.
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Methodological Study Of Opinion Mining And Sentiment Analysis Techniques ijsc
Decision making both on individual and organizational level is always accompanied by the search of other’s opinion on the same. With tremendous establishment of opinion rich resources like, reviews, forum discussions, blogs, micro-blogs, Twitter etc provide a rich anthology of sentiments. This user generated content can serve as a benefaction to market if the semantic orientations are deliberated. Opinion mining and sentiment analysis are the formalization for studying and construing opinions and sentiments. The digital ecosystem has itself paved way for use of huge volume of opinionated data recorded. This paper is an attempt to review and evaluate the various techniques used for opinion and sentiment analysis.
Zadeh conceptualized the theory of fuzzy set to provide a tool for the basis of the theory of possibility. Atanassov extended this theory with the introduction of intuitionistic fuzzy set. Smarandache introduced the concept of refined intuitionistic fuzzy set by further subdivision of membership and non-membership value. The meagerness regarding the allocation of a single membership and non-membership value to any object under consideration is addressed with this novel refinement. In this study, this novel idea is utilized to characterize the essential elements e.g. subset, equal set, null set, and complement set, for refined intuitionistic fuzzy set. Moreover, their basic set theoretic operations like union, intersection, extended intersection, restricted union, restricted intersection, and restricted difference, are conceptualized. Furthermore, some basic laws are also discussed with the help of an illustrative example in each case for vivid understanding.
A Mathematical Programming Approach for Selection of Variables in Cluster Ana...IJRES Journal
The document presents a mathematical programming approach for selecting important variables in cluster analysis. It formulates a nonlinear binary model to minimize the distance between observations within clusters, using indicator variables to select important variables. The model is applied to a sample dataset of 30 observations across 5 variables, correctly identifying variables 3, 4 and 5 as most important for clustering the observations into two groups. The results are compared to an existing variable selection heuristic, with the mathematical programming approach achieving a 100% correct classification versus 97% for the other method.
Optimizing Gradle Builds - Gradle DPE Tour Berlin 2024Sinan KOZAK
Sinan from the Delivery Hero mobile infrastructure engineering team shares a deep dive into performance acceleration with Gradle build cache optimizations. Sinan shares their journey into solving complex build-cache problems that affect Gradle builds. By understanding the challenges and solutions found in our journey, we aim to demonstrate the possibilities for faster builds. The case study reveals how overlapping outputs and cache misconfigurations led to significant increases in build times, especially as the project scaled up with numerous modules using Paparazzi tests. The journey from diagnosing to defeating cache issues offers invaluable lessons on maintaining cache integrity without sacrificing functionality.
Advanced control scheme of doubly fed induction generator for wind turbine us...IJECEIAES
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A New Approach for Ranking Shadowed Fuzzy Numbers and its Application
1. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
DOI: 10.5121/ijcsit.2020.12602 17
A NEW APPROACH FOR RANKING SHADOWED
FUZZY NUMBERS AND ITS APPLICATION
Mohamed A. H. El-Hawy
Department of Management Information Systems, Modern Academy for
Computer Science and Management Technology, Cairo, Egypt
ABSTRACT
In many decision situations, decision-makers face a kind of complex problems. In these decision-making
problems, different types of fuzzy numbers are defined and, have multiple types of membership functions.
So, we need a standard form to formulate uncertain numbers in the problem. Shadowed fuzzy numbers are
considered granule numbers which approximate different types and different forms of fuzzy numbers. In
this paper, a new ranking approach for shadowed fuzzy numbers is developed using value, ambiguity and
fuzziness for shadowed fuzzy numbers. The new ranking method has been compared with other existing
approaches through numerical examples. Also, the new method is applied to a hybrid multi-attribute
decision making problem in which the evaluations of alternatives are expressed with different types of
uncertain numbers. The comparative study for the results of different examples illustrates the reliability of
the new method.
KEYWORDS
Fuzzy numbers, Intuitionistic fuzzy numbers, Shadowed sets, Shadowed fuzzy numbers, Ranking, Fuzziness
measure.
1. INTRODUCTION
Vague information is represented by many uncertain sets. Fuzzy set is one of the most important
uncertain set which was proposed by Zadeh. Fuzzy set is determined by its membership function
that represents vagueness and imprecision in linguistic term. fuzzy number is a special type of
fuzzy set which is defined on real numbers scale.
Intuitionistic fuzzy sets (IFSs) are introduced by Atanassov which generalized the concept of
fuzzy set. IFSs are characterized by two functions (membership and non-membership) [1]. These
features provide more flexibility in representing uncertain numbers. The shadowed sets proposed
by Pedrycz for approximation of fuzzy sets by three values {0, 1, [0,1]}[2]. Fuzzy membership
values assign to 0, l or uncertain interval. Three areas are induced from fuzzy set to define
shadowed set. The elements with membership grade 0 constitute the excluded area of the
shadowed set. The core area consists of the elements that almost certainly belong to the fuzzy set.
The shadow area relates to the elements that possibly belong to the fuzzy set.
The author proposed an improved form of shadowed fuzzy numbers (SFNs) which preserves two
types of uncertainty (fuzziness and non-specificity) [3]. Also, we extended this idea to a higher
type of fuzzy sets [4].
In the literature, numerous ranking approaches have been developed to rank fuzzy numbers. One
category of these methods ranks fuzzy numbers based on the integration between fuzzy mean and
2. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
18
spread. The mean of fuzzy number is represented generally as the centroid value of it. The spread
of fuzzy numbers is used to support ranking methods, especially in the cases of embedded fuzzy
numbers with different spreads [5]. Many researchers have dealt with the issue of ranking fuzzy
numbers using centroid point and spread [6, 7, 8, 9]. Chen and Lu presented the ranking method
for fuzzy numbers which consider the middle-point and spread of each α-cut of fuzzy numbers
[10]. Abu Bakar et al. proposed ranking method using five distance-based components for
ranking fuzzy numbers that include centroid point, height and spread of fuzzy numbers [11]. S.M.
Chen and J.H. Chen presented a new ranking method based on the defuzzified values, the heights
and the spreads for generalized fuzzy numbers [12]. Abu Bakar et al. proposed a ranking index
which integrates centroid point and spread for fuzzy numbers [13]. R. Chutia and B. Chutia
discussed the concept of parametric form of fuzzy number and proposed a new ranking method
using the value and the ambiguity of it at different decision levels [14]. The same concept of the
integration between value and ambiguity is applied on intuitionistic fuzzy numbers IFNs. Deng-
Feng Li developed a new methodology for ranking triangular Intuitionistic fuzzy numbers TIFNs
based on a ratio of the value index to the ambiguity index and applied to multi-attribute decision
making problem [15]. P. K. De and D. Das proposed a new ranking approach for trapezoidal
intuitionistic fuzzy numbers (TrIFN) using the value and the ambiguity indexes of them [16].
Some ranking methods provide ability to rank different types of fuzzy numbers using value and
ambiguity. Also, other approaches are intended for one type of fuzzy numbers or one kind of
membership functions. Some researchers proposed ranking method has related to the fuzziness of
fuzzy numbers [17]. In this paper, a new method for ranking shadowed fuzzy numbers is
proposed to order different types of fuzzy numbers and different membership functions. The
value and ambiguity of a shadowed fuzzy number SFN will be defined. The proposed method
uses values and ambiguities of SFNs to rank them. Also, the fuzziness values of SFNs are used to
support ranking approach in the case of the equality of ranking values and ambiguities. The
proposed ranking approach will be presented and applying to different fuzzy numbers ranking
examples. Also, the new algorithm is proposed to solve a hybrid multi-attribute decision making
problem that includes the new SFNs ranking approach. This MADM problem has different data
types include interval numbers, type-l fuzzy numbers with two different membership function
types and intuitionistic fuzzy numbers. The reset of this paper is organized as follows: section 2
introduces the basic definitions of FNs, IFNs and SFNs. Section 3 defines the concepts of the
value, the ambiguity and the fuzziness of SFNs. we introduce proposed steps for new ranking
method of SFNs. Section 4, numerical examples are provided, and a comparative study is
presented with previous methods. Also, we present a hybrid multi-attribute decision making
problem which is solved by using the proposed algorithm. Finally, conclusions and the main
features of the proposed ranking approach are discussed in Section 5.
2. DEFINITIONS AND PRELIMINARIES
2.1. Fuzzy Sets
Fuzzy set provides excellent means to model the linguistic terms by introducing gradual
memberships. The membership function of a fuzzy set A is defined as follows [18]
A:X → [0, 1] (1)
The membership function mapping elements of universe of discourse X to unit interval [0, 1].
The membership function is essential for describing fuzzy set.
3. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
19
2.1.1. Fuzzy Number
A fuzzy number (FN) A
̃ is a fuzzy set that is defined on the real numbers scale ℝ with the
following conditions [19, 20].
A
̃ is normal, i.e. at least one element xi such that μ(xi) = 1.
A
̃ is a convex such that A
̃(δx + (1 − δ)y) ≥ min (A
̃(x), (y)) ∀x, y ∈ U and δ ∈ [0,1]
where U is a universe of discourse.
The support of A
̃ is bounded.
A fuzzy number is important to approximate uncertainty concept about numbers or intervals. The
membership function of the real fuzzy number A
̃ is defined by [19]
μA
̃ (x) =
{
lA
̃ (x) if a ≤ x ≤ b
1 if b ≤ x ≤ c,
rA
̃(x) if c ≤ x ≤ d,
0 otherwise
(2)
where lA
̃ and rA
̃ are two continuous increasing and decreasing functions for left and right side of
fuzzy number, x ∈ U and a, b, c, d are real numbers.
2.2. Intuitionistic Fuzzy Sets
The concept of intuitionistic fuzzy sets (IFS) is introduced in 1986 by Atanassov. This concept is
defined with membership function and non-membership function [1, 21]. Let A is an
intuitionistic fuzzy set in finite set 𝑋 and is defined as
𝐴 = {< 𝑥, μA(x), vA(x) >|x ∈ 𝑋} (3)
Where μA(x) ∶ X → [0, 1] is the membership function of A, vA(x) ∶ X → [0, 1] is the non-
membership function of A, such that
0 ≤ μA(x) + vA(x) ≤ 1 (4)
For each intuitionistic fuzzy set in X, the intuitionistic index of x in A or a hesitancy degree of x
to A is defined as
πA = 1 − μA(x) − vA(x) (5)
Where 0 ≤ πA ≤ 1. For each x ∈ X
2.2.1. Intuitionistic Fuzzy Numbers (IFN)
An intuitionistic fuzzy subset is called an intuitionistic fuzzy number, if it’s defined on real
numbers domain as [22, 23]
A = {< 𝑥, μA(x), vA(x) >|x ∈ ℝ} (6)
Where
4. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
20
1. A is normal, i.e. at least two points x0, x1 belong to A such that μA(x0) = 1, vA(x1) = 1.
2. A is convex, i.e. 𝜇𝐴 is fuzzy convex and 𝑣𝐴 is fuzzy concave.
3. 𝜇𝐴 is upper semicontinuous and 𝑣𝐴 is lower semicontinuous.
4. support(A) = {x ∈ X |𝑣𝐴(x) < 1} is bounded.
2.3. Shadowed Sets
In this section, we present some basic concepts of shadowed sets. The shadowed set S is defined
by a mapping from a universal set X to the set of three values as [2, 24, 25]
S ∶ X → {0, 1, [0,1]} (7)
Shadowed set is created by optimization of the threshold α that is calculated using the objective
function as
v(r1) + v(r2) = v(r3) (8)
where v is uncertainty of regions r1, r2, r3. The r1 region is induced by reduce all membership
values less than the threshold α to 0. The r2 region is created by elevated membership values
more than 1-α to 1. The r3 is a shadow region for membership values around 0.5 as illustrated in
Figure 1.
Figure 1: Regions that construct shadowed set
The optimal α can be derived by minimizing the objective function which achieves the balance of
uncertainty with these regions as the following
Vα = |v(r1) + v(r2) − v(r3)| (9)
where Vα is the performance index for the threshold α and α ∈ [0, 0.5). Pedrycz calculated
optimum α for triangular, Gaussian and parabolic fuzzy sets to be 0.4142, 0.395 and 0.405
respectively.
2.3.1. Shadowed Fuzzy Numbers
Shadowed fuzzy numbers (SFNs) are induced from fuzzy numbers [26]. The author proposed an
improved approach to create SFN that preserves uncertainty characteristics of fuzzy number and
can be deduced from type-1 fuzzy numbers and higher type of them e.g., intuitionistic fuzzy sets
(IFS) [4]. The author method is deduced SFN by building core interval and fuzziness intervals as
5. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
21
in Figure 4 [23]. In the case of type-1 fuzzy numbers, the α –core can be derived using the
following equation [3]
AR(α) − AL(α) + 1 = 2HA (10)
where HA is the non-specificity value of fuzzy set A [27, 23]. AL(α) and AR(α) are left and right
α-cut functions of fuzzy number A. The α-core interval illustrates in Figure 2.
Figure 2: core interval for triangular fuzzy number
The shadow intervals represent fuzziness of fuzzy sets and are calculated for type-1 fuzzy
number as
wL = ∑ fA(xL)
xL
(11)
wR = ∑ fA(xR)
xR
(12)
where xL and xR are respectively the left support and right support of fuzzy number A from core
value. wLandwR, are the left and right fuzziness intervals. The fuzziness intervals represent
uncertainty regions. fA is the fuzziness set of fuzzy number A as in Figure 3. It is proposed by
Tahayori and is defined as the following [28]
fA = (x, fuzz(x)), (13)
fuzz(x) = 1 − |2μA(x) − 1|.
(14)
6. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
22
Figure 3: Fuzziness set for a triangular fuzzy set
Figure 4: The SFN for triangular fuzzy number
3. THE PROPOSED METHOD FOR RANKING SFNS
In this section, we present a new approach for ranking shadowed fuzzy numbers (SFNs). This
method is used to order fuzzy numbers that SFNs are induced from them. Our proposed method
is based on new concepts of SFN namely the value and the ambiguity of SFN. These concepts
will be proposed based on Delgado et al. definitions of the value and the ambiguity [29].
Definition 3.1:
Let us consider SFN 𝑆𝐴 that parameterizes as the following
SA = (s1
A
, s2
A
, s3
A
, s4
A
)then CA = (s2
A
, s3
A
) is the core interval of SA. Also, let FS
A
is the fuzziness
value ofSA such that [18]
FS
A
= (s2
A
− s1
A
) + (s4
A
− s3
A
) (15)
Definition 3.2:
Let VS
A
is the value of the SFN SA and is defined as
7. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
23
VS
A
=
(s2
A
+ s3
A
)
2
(16)
Definition 3.3:
Let SA is the SFN which induced from fuzzy number A. Then the ambiguity value uS
A
of SA is
defined as
uS
A
= s3
A
− s2
A (17)
Definition 3.4:
Let SAand SB are two SFNs which induced from fuzzy numbers A and B. Let AmbS
A
and AmbS
B
are the ambiguity indexes for SA and SB respectively and are defined as
AmbS
A
= 1 −
uS
A
uS
A
+ uS
B
(18)
and
AmbS
B
= 1 −
uS
B
uS
A
+ uS
B
(19)
where uS
A
and uS
B
are ambiguity values for SA and SB respectively
Definition 3.5:
Let SA is the SFN which induced from fuzzy number A. Then the rank value RS
A
of SAis defined
as
RS
A
= VS
A
+ AmbS
A
× λ (20)
where VS
A
is the value of SA , AmbS
A
is the ambiguity index of SA and λ is an attitude value (AV)
where λ ∈ [0.5, 1]
An attitude value (AV) represents the attitude of the decision maker against ambiguity. In the
case of 𝜆 = 1, this value indicates a decision maker’s optimistic attitude towards ambiguity. If
λ ∈ ]0.5, 1[ then AV refers to decision maker’s neutral attitude towards ambiguity. When λ =
0.5, this value indicates decision maker’s pessimistic attitude towards ambiguity. In rank
examples, we prefer to λ = 0.5 which more reasonable.
A ranking procedure of two SFNs 𝑺𝑨 and 𝑺𝑩, as the following steps:
Step 1: Calculate VS
A
, VS
B
, AmbS
A
and AmbS
B
for SA and SB using (16), (17), (18) and (19).
Step 2: Calculate rank values for SA and SB with an attitude value (AV) λ and λ ∈ [0.5, 1] using
(20).
8. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
24
Step 3: the ranking of two SFNs is according to
If RS
A
> RS
B
then SA > SBand A > 𝐵.
If RS
A
< RS
B
then SA < SBand A < 𝐵.
If RS
A
= RS
B
then calculate FS
A
and FS
B
of two SFNs SA and SB using (15) and
If FS
A
< FS
B
then SA > SBand A > 𝐵
If FS
A
> FS
B
then SA < SBand A < 𝐵
If FS
A
= FS
B
then SA = SBand A = B
4. NUMERICAL EXAMPLES
In this section, five numerical examples are used to demonstrate the new proposed method
reliability for ranking the fuzzy numbers. The proposed method is compared with other existing
ranking methods that integrate the centroid point and the spread of fuzzy numbers. Also, the
comparison extends to other methods that have ordered fuzzy numbers using their values and
ambiguities. This comparative study is summarized in Table 1. A new additional example will be
presented in this section to illustrate the characteristic of the new method for ranking different
types of IFNs. Also, a hybrid multi-attribute decision making problem will be solved using the
new approach.
Example 1: Let A and B are two triangular fuzzy numbers TFNs such that A = (0.1, 0.4, 0.7) and
B = (0.3, 0.4, 0.5) as in Figure 5. Using our method, Two SFNs SA and SB are induced from two
fuzzy numbers A and B such that SA = (0.1, 0.25, 0.55, 0.7) and SB = (0.3, 0.35, 0.45, 0.5)[23].
We use (20) to obtain the rank values of SA and SB using λ = 0.5 as the following:
RA = 0.525 and RB= 0.775. Based on these results, the ranking of fuzzy numbers is A<B.
Figure 5: Fuzzy numbers A and B of Example 1
Example 2:
Let A is a trapezoidal fuzzy number TrFN and B is a triangular fuzzy numbers TFN such thatA=
(0.1, 0.2, 0.4, 0.5) and B = (0.1, 0.3, 0.5) as in Figure 6.
Using the author method, two SFNs 𝑆𝐴 and 𝑆𝐵 are obtained from two FNs A and B such that SA =
(0.1, 0.15, 0.45, 0.5) and SB = (0.1, 0.2, 0.4, 0.5) [3]. The rank values for SA and SB are
calculated with λ = 0.5 and the results are RA = 0.5 and RB= 0.6. The order of fuzzy numbers is
A<B.
9. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
25
Figure 6: Fuzzy numbers A and B of Example 2
Example 3:
Consider the following two fuzzy numbers with different heights as shown in Figure 7.
A = (0.1, 0.4, 0.7) and height(A) = 0.8, B = (0.1, 0.4, 0.7) and height(B) = 1
Using the same calculation steps as the previous examples, we getSA = (0.08 0.2538 0.5462
0.72); SB = (0.1038, 0.2538, 0.5462, 0.6962); RA = 0.65 ;RB= 0.65.
Based on these results, the two ranking values are equal so, we use (15) to obtain fuzziness values
for each SFN. The fuzziness values are FS
A
= 0.345 and FS
B
= 0.3 then the ranking of fuzzy
numbers is A<B.
Figure 7: Fuzzy numbers A and B of Example 3
Example 4:
Let A and C are TrFNs and B is TFN such that A= (0, 0.4, 0.6, 0.8), B = (0.2, 0.5, 0.9) and C=
(0.1, 0.6, 0.7, 0.8), as in Figure 8.
Using the author method, we induce three SFNs where SA = (0.0034, 0.2034, 0.6983, 0.7983) ,
SB = (0.2052, 0.3552, 0.6931, 0.8931) and SC = (0.1124, 0.3624, 0.7475, 0.7975)[3]. We use
(20) to obtain the rank values for SA , SB and SC using λ = 0.5 as the following:
B
A
μ(x)
x
10. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
26
RA = 0.7477, RB= 0.8854 and RC = 0.8968. According to these results, the ranking of fuzzy
numbers is A < B < 𝐶.
Figure 8: Fuzzy numbers A , B and C of Example 4
Table 1: Comparative results of the proposed ranking method with the existing ranking methods
Examples Chen and Sanguansat
[5]
Abu Bakar and
Gegov [13]
R.Chutia and
B.Chutia [14]
Proposed method
1 A ≈ B A > 𝐵 A < 𝐵 A<B
2 A ≈ B A > 𝐵 A < 𝐵 A<B
3 A < B A < 𝐵 A < B A<B
4 A < B < 𝐶 A < B < 𝐶 A < B < 𝐶 A < B < 𝐶
Example 5:
Let A1, A2 and A3 are three trapezoidal intuitionistic fuzzy numbers (TrIFNs),where A1=
[(0.1,0.3,0.5,0.8), (0.1,0.3,0.5,0.8) 0.5,0.2] , A2= [(0.2 ,0.3,0.6 ,0.9), (0.2 ,0.3,0.6 ,0.9) 0.6 ,0.4]
and A3= [(0.1, 0.5,0.7, 0.9), (0.1, 0.5, 0.7, 0.9) 0.5,0.3] [16]. We induce three SFNs using author
method such that SA1
= (0.15, 0.27, 0.54, 0.725), SA2
= (0.23, 0.29, 0.64, 0.81) and SA3
= (0.23,
0.47, 0.71, 0.83)[4]. The rank values of SA1
, SA2
and SA3
are calculated by using (20) withλ =
0.5 and the results are RA1
= 0.748, RA2
= 0.7615 and RA3
= 0.9505. According to these results,
the order of three TrIFNs is A1 < A2 < A3.
Example 6:
In this example, we apply the proposed method on the case of ranking three different types of
intuitionistic fuzzy numbers.
Let B1, B2 and B3 are three different types of intuitionistic fuzzy numbers(IFNs),where B1=
[(2,3,5,6), (1,3,5,7) 1,0] is trapezoidal intuitionistic fuzzy number(TrIFN), B2 = [(m= 4, σ = 0.5)
,(m= 4, σ = 1) 1,0] is Gaussian intuitionistic fuzzy number(GIFN), and B3= [(3,6,9) , (4,6,8) 1,0]
is triangular intuitionistic fuzzy numbers (TIFN) as in Figure 9. Three SFNs are induced using
authors method as S1= [1.615, 2.31, 5.7, 6.386] , S2= [2.12, 3.17, 4.83, 5.88] and S3= [3.653,
4.93, 7.07, 8.35][4]. Using the new ranking method, The rank values of S1 , S2 and S3 are R1 =
4.2693 , R2= 4.3846 and R3 = 6.3512 with λ = 0.5 then the order of SFNs is S3>S2>S1.
According to this result, the ranking for three IFNs is B3> B2> B1.
A
B
C
μ(x)
x
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27
Figure 9: Three IFNs B1, B2 and B3
4.1. Discussion of the Results of Examples
1. For the fuzzy numbers A and B as in the example 1, Chen and Sanguansat method fail to
discriminate between two fuzzy numbers which they have the same value as in Table 1.
Abu Baker and Gegov method prefers fuzzy number A to B but the ambiguity of B is less
than A. R.Chutia and B.Chutia method and the proposed method get the same ranking
order, which is consistent with intuition. The two fuzzy numbers have the same value, but
they are different in ambiguities.
2. In the example 2, the correct ranking order of fuzzy numbers for this case should be A < B
due to the same reasons mentioned in the previous example.
3. In both examples 3 and 4, the order by the proposed method is consistent with other
methods as illustrated in Table 1.
4. The ranking result for example 5 like the ranking order from D. Das method [16]. This
result explains that the proposed approach works well.
5. Example 6 is presented to explain the case of ranking three different types of intuitionistic
fuzzy numbers.
4.2. Application of the Proposed Method in MADM Problem
The multiple attribute decision-making problems under fuzzy environment have been studied
extensively by many authors. In this section, we will focus on the personnel selection problem,
which were presented by both Mahdavi and Deng-Feng Li [15] [30] [31]. Also, the problem was
solved using value and ambiguity indexes in [31]. We develop a new algorithm to solve the
personnel selection problem in the case of hybrid data types such as interval numbers, type-1
fuzzy numbers and IFNs.
Suppose that a software company desires to hire a system analyst [31]. After preliminary
screening, three candidates’ alternatives A1, A2 and A3 remain for further evaluation. The
decisionmaking committee assesses the three candidates. The decision makers consider five
benefit criteria to evaluate these candidates, including, emotional steadiness (C1), oral
communication skill (C2), personality (C3), experience (C4), and self-confidence (C5).
𝐵1
𝐵2
𝐵3
𝜇(𝑥)
𝑥
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28
The evaluations for these criteria vary between interval numbers, type-1 fuzzy numbers and
intuitionistic fuzzy numbers. The assessment for C1 is represented by triangular fuzzy numbers
TFNs. The criterion C2 is evaluated using intervals numbers INs. The assessment for the criterion
C3 can be represented by Gaussian fuzzy numbers GFNs. The triangular intuitionistic fuzzy
numbers TIFNs are used for C4 and C5 criteria. The evaluation values are given in Table (2) by
the decision makers. The crisp weight wj is assigned to each criterion such that wj ∈ [0,1] and
∑ wj = 1
n
j=1 .
Table 2: The evaluation values of the three candidates under all criteria
C1 C2 C3 C4 C5
A1 (5.7, 7.7, 9.3) [5, 9] (7.7; 0.7) [(8.33,9.67,10);0.6,0.4] [(3,5,7);0.6,0.3]
A2 (6.3, 8.3, 9.7) [9, 10] (9.7; 0.12) [(8,9,10);0.6,0.3] [(7,9,10);0.6,0.2]
A3 (6.3, 8, 9) [7, 10] (9; 0.46) [(6,8,9);0.6,0.2] [(6.3,8.3,9.7);0.7,0.2]
We propose the following steps to solve this problem as follows:
Step 1: The SFNs are obtained using author approach for the type-l fuzzy numbers as in Table 2
for criteria (C1) and (C3) [3]. Also, the author method is applied to transform IFNs to SFNs for
criteria (C4) and (C5) [4]. The new decision matrix is obtained as in Table 3.
Table 3: The evaluation values of decision table using SFNs
C1 C2 C3 C4 C5
A1 (5.82, 6.82, 8.4,
9.2)
[5, 9] (6.194, 6.9, 8.5,
9.122)
(8.591, 9.35, 9.75,
9.937)
(3.344, 4.53, 5.47,
6.656)
A2 (6.42,7.42, 8.92,
9.62)
[9, 10] (9.424, 9.55,
9.85, 9.972)
(8.147, 8.74, 9.26,
9.853)
(7.239, 8.46, 9.27,
9.88)
A3 (6.39, 7.24, 8.45,
8.95)
[7, 10] (7.979, 8.46,
9.54, 9.987)
(6.239, 7.46, 8.27,
8.88)
(6.525,7.72, 8.71,
9.546)
Step 2: The normalized SFNs are calculated using (21) and normalized interval numbers are
obtained using (22). The results are displayed in Table 4.
Definition 4.1:
Let rij is the normalized evaluation value for the jth
benefit criteria and two cases can be defined
for it. In the case of SFN sij= (sij1, sij2, sij3, sij4) is defined as
rij = [
sij1
s̅j4
,
sij2
s̅j4
,
sij3
s̅j4
,
sij4
s̅j4
] (21)
where s̅j4 = maxi{sij4|i = 1,2, … . . , m}, j = 1,2, … . . , n. In the case of interval number IN tij =
[tij
L
,tij
R
] is defined as the following
rij = [
tij
L
t̅j
R ,
tij
R
t̅j
R ]
(22)
Where t
̅j
R
= maxi{tij
R
|i = 1,2, … . . , m}, j = 1,2, … . . , n.
13. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
29
Table 4: The normalized evaluation values of decision table
C1 C2 C3 C4 C5
A1 (0.6, 0.71, 0.87,
0.96)
[0.5, 0.9] (0.62, 0.69,
0.85, 0.91)
(0.86, 0.94, 0.98, 1) (0.34, 0.46, 0.55,
0.67)
A2 (0.67, 0.77,
0.93, 1)
[0.9, 1] (0.94, 0.96,
0.99, 1)
(0.82, 0.88, 0.93,
0.99)
(0.73, 0.86, 0.94,
1)
A3 (0.66,0.75,
0.88, 0.93)
[0.7, 1] (0.8, 0.85,
0.96, 1)
(0.63, 0.75, 0.83,
0.89)
(0.66, 0.78, 0.88,
0.97)
Step 3: Let w1= 0.14, w2= 0.3, w3= 0.12, w4= 0.3 and w5= 0.14 are weights of attributes. The
weighted normalized SFNs are obtained using (23) and the weighted normalized interval numbers
are calculated using (24). The results shown in Table 5.
Definition 4.2:
Let wrij is the weighted normalized evaluation value for the 𝑗𝑡ℎ
benefit criteria and we define
two types of it. In the case of SFN is defined as
wrij = [s̅ij1 × wj, s̅ij2 × wj, s̅ij3 × wj, s̅ij4 × wj] (23)
Where wj is the weight value for the jth
criteria such that j = 1,2,…,n. and s̅ij =
[s̅ij1, s̅ij2, s̅ij3, s̅ij4] is a normalized SFN.
In the case of interval number IN, the 𝑤𝑟𝑖𝑗 is defined as
wrij = [t̅ij
L
× wj, t̅ij
R
× wj]. (24)
Where wj is the weight value for thejth
criteria andt̅ij = [t̅ij
L
,t̅ij
R
] is a normalized IN.
Table 5: The weighted normalized evaluation values of decision table
C1 C2 C3 C4 C5
A1 (0.084,0.099,
0.122, 0.134)
[0.15,
0.27]
(0.074, 0.0828,
0.102, 0.109)
(0.258, 0.282,
0.294, 0.3)
(0.048, 0.064,
0.077, 0.094)
A2 (0.094,0.108, 0.13,
0.14)
[0.27, 0.3] (0.113, 0.115,
0.119, 0.12)
(0.246, 0.264,
0.279, 0.297)
(0.102, 0.12,
0.132, 0.14)
A3 (0.092,0.105,
0.123, 0.13)
[0.21, 0.3] (0.096, 0.102,
0.115, 0.12)
(0.189, 0.225,
0.249, 0.267)
(0.092, 0.109,
0.123, 0.136)
Step 4: we use (25) and (26) to create the aggregation values of weighted normalized SFNs for
three alternatives and the results shown in Table 6.
Definition 4.3:
Let dsi is an aggregation decision values of alternatives Ai where i = 1, 2, … … , m are obtained as
dsi = ∑ wrij
n
j=1
(25)
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30
where dsi (i = 1,2, … . . , m) are SFNs and wrij is the weighted normalized evaluation value for
the 𝑗𝑡ℎ
benefit criteria. This operation is defined between SFNs and INs as the following
T + S = (s̿1, s̿2, s̿3, s̿4) (26)
such that 𝑆 is a shadowed fuzzy number SFN, s̿1 = (s1 + tL) , s̿2 = (s2 + tL) , s̿3 = (s3 + tR) ,
s̿4 = (s4 + tR) and T = [tL ,tR] is an IN.
Table 6: The aggregation values of weighted normalized SFNs
A1 (0.614, 0.679, 0.865, 0.907)
A2 (0.825, 0.877, 0.96, 0.997)
A3 (0.68, 0.751, 0.911, 0.953)
Step 5: finally, we use the proposed approach to rank SFNs resulting from step 4. The rank values
for alternatives A1,A2and A3 are RA1
= 1.0552, RA2
= 1.3218 and RA3
= 1.1445 with λ = 0.5.
The order of the three alternatives is A2 > A3 > A1.
4.3. Comparison Analysis of the Result
Based on the previous results of the MADM problem, the following remarks are found:
In Mahdavi et al. approach, the ranking of three alternatives is A2 > A3 > A1 which it is the
same result of the new approach [30]. In Mahdavi method, the MADM problem is presented with
the type-1 triangular fuzzy numbers and orders alternatives using similarity values to ideal
solution.
In Deng-Feng Li et al. method, the ranking of three alternatives is A3 > A1 > A2 with the weight
λ∈ [0,0.793] [31]. This weight represents the decision maker’s preference information. In the
case of λ∈ (0.793, 1], the order of three alternatives is A1 > A3 > A2.
In Deng-Feng Li approach, the data inputs of MADM problem are represented by IFNs and the
value-index and the ambiguity-index of IFNs are used to rank IFNs. According to Deng-Feng Li
et al. method, if ratings of the alternatives on the attributes are reduced to type-1 triangular fuzzy
numbers then the ranking order is A2 > A3 > A1 [15] [31]. This result like the ranking order
from the proposed method.
4.4. Discussion
Previous ranking approaches of fuzzy numbers with only one type of them (type-1 or higher
type). These techniques were difficult to apply to complex decision-making problems that contain
different types of fuzzy numbers. In the new approach, we unified the different types of fuzzy
numbers using shadowed fuzzy numbers and preserve uncertainty characteristics of fuzzy
numbers at the same time.
The new approach is more flexible to rank fuzzy numbers with different membership functions
than previous methods.
15. International Journal of Computer Science & Information Technology (IJCSIT) Vol 12, No 6, December 2020
31
5. CONCLUSION
This paper is proposed a new approach to rank SFNs. This method is applied to order fuzzy
numbers from type-1 and higher type which transforms different types of fuzzy numbers to SFNs.
The new ranking approach induces the rank values which integrates the value and the ambiguity
of SFN. Also, it weighted an ambiguity value using the decision maker's attitude value. In the
case of equal rank values, the fuzziness values are used to rank SFNs. The new algorithm is
applied for different examples of ranking type-1 fuzzy numbers FNs and intuitionistic fuzzy
numbers IFNs. The ranking results of the proposed method are compared with previous ranking
approaches for type-1 FNs and IFNs. Also, the new algorithm is applied to solve a hybrid multi-
attribute decision making problem where SFNs are used to unify the uncertain types of linguistic
terms. The new method of ranking is applied to rank alternatives.
The new algorithm is more efficient and more flexible than previous methods which solved the
same problem with one type of linguistic terms.
The future work will focus on verifying the usefulness of the new approach with other multi-
criteria techniques. Also, we can study more applications of the new method with more decision-
making problems.
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