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DOTNET 2013 IEEE CLOUDCOMPUTING PROJECT A fast clustering based feature subse...IEEEGLOBALSOFTTECHNOLOGIES
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A fast clustering based feature subset selection algorithm for high-dimension...IEEEFINALYEARPROJECTS
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DOTNET 2013 IEEE CLOUDCOMPUTING PROJECT A fast clustering based feature subse...IEEEGLOBALSOFTTECHNOLOGIES
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A fast clustering based feature subset selection algorithm for high-dimension...IEEEFINALYEARPROJECTS
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To Get any Project for CSE, IT ECE, EEE Contact Me @ 09666155510, 09849539085 or mail us - ieeefinalsemprojects@gmail.com-Visit Our Website: www.finalyearprojects.org
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.
C LUSTERING B ASED A TTRIBUTE S UBSET S ELECTION U SING F AST A LGORITHmIJCI JOURNAL
In machine learning and data mining, attribute sel
ect is the practice of selecting a subset o
f most
consequential attributes for utilize in model const
ruction. Using an attribute select method is that t
he data
encloses many redundant or extraneous attributes. W
here redundant attributes are those which sup
ply
no supplemental information than the presently
selected attributes, and impertinent attribut
es offer
no valuable information in any context
EFFICIENT FEATURE SUBSET SELECTION MODEL FOR HIGH DIMENSIONAL DATAIJCI JOURNAL
This paper proposes a new method that intends on reducing the size of high dimensional dataset by
identifying and removing irrelevant and redundant features. Dataset reduction is important in the case of
machine learning and data mining. The measure of dependence is used to evaluate the relationship
between feature and target concept and or between features for irrelevant and redundant feature removal.
The proposed work initially removes all the irrelevant features and then a minimum spanning tree of
relevant features is constructed using Prim’s algorithm. Splitting the minimum spanning tree based on the
dependency between features leads to the generation of forests. A representative feature from each of the
forests is taken to form the final feature subset
A NEW TECHNIQUE INVOLVING DATA MINING IN PROTEIN SEQUENCE CLASSIFICATIONcscpconf
Feature selection is more accurate technique in protein sequence classification. Researchers apply some well-known classification techniques like neural networks, Genetic algorithm, Fuzzy ARTMAP, Rough Set Classifier etc for extracting features.This paper presents a review is with
three different classification models such as fuzzy ARTMAP model, neural network model and Rough set classifier model.This is followed by a new technique for classifying protein
sequences.The proposed model is typically implemented with an own designed tool using JAVA and tries to prove that it reduce the computational overheads encountered by earlier
approaches and also increase the accuracy of classification.
A Review on Feature Selection Methods For Classification TasksEditor IJCATR
In recent years, application of feature selection methods in medical datasets has greatly increased. The challenging task in
feature selection is how to obtain an optimal subset of relevant and non redundant features which will give an optimal solution without
increasing the complexity of the modeling task. Thus, there is a need to make practitioners aware of feature selection methods that have
been successfully applied in medical data sets and highlight future trends in this area. The findings indicate that most existing feature
selection methods depend on univariate ranking that does not take into account interactions between variables, overlook stability of the
selection algorithms and the methods that produce good accuracy employ more number of features. However, developing a universal
method that achieves the best classification accuracy with fewer features is still an open research area.
Hybridization of Meta-heuristics for Optimizing Routing protocol in VANETsIJERA Editor
The goal of VANET is to establish a vehicular communication system which is reliable and fast which caters to
road safety and road safety. In VANET where network fragmentation is frequent with no central control, routing
becomes a challenging task. Planning an optimal routing plan for tuning parameter configuration of routing
protocol for setting up VANET is very crucial. This is done by defining an optimization problem where
hybridization of meta-heuristics is defined. The paper contributes the idea of combining meta-heuristic
algorithm to enhance the performance of individual search method for optimization problem.
Minkowski Distance based Feature Selection Algorithm for Effective Intrusion ...IJMER
Intrusion Detection System (IDS) plays a major role in the provision of effective security to various types of networks. Moreover, Intrusion Detection System for networks need appropriate rule set for classifying network bench mark data into normal or attack patterns. Generally, each dataset is characterized by a large set of features. However, all these features will not be relevant or fully contribute in identifying an attack. Since different attacks need various subsets to provide better detection accuracy. In this paper an improved feature selection algorithm is proposed to identify the most appropriate subset of features for detecting a certain attacks. This proposed method is based on Minkowski distance feature ranking and an improved exhaustive search that selects a better combination of features. This system has been evaluated using the KDD CUP 1999 dataset and also with EMSVM [1] classifier. The experimental results show that the proposed system provides high classification accuracy and low false alarm rate when applied on the reduced feature subsets
Decentralized data fusion approach is one in which features are extracted and processed individually and finally fused to obtain global estimates. The paper presents decentralized data fusion algorithm using factor analysis model. Factor analysis is a statistical method used to study the effect and interdependence of various factors within a system. The proposed algorithm fuses accelerometer and gyroscope data in an inertial measurement unit (IMU). Simulations are carried out on Matlab platform to illustrate the algorithm.
DATA PARTITIONING FOR ENSEMBLE MODEL BUILDINGijccsa
In distributed ensemble model-building algorithms, the performance and statistical validity of models are
dependent on sizes of the input data partitions as well as the distribution of records among the partitions.
Failure to correctly select and pre-process the data often results in the models which are not stable and do
not perform well. This article introduces an optimized approach to building the ensemble models for very
large data sets in distributed map-reduce environments using Pass-Stream-Merge (PSM) algorithm. To
ensure the model correctness the input data is randomly distributed using the facilities built into mapreduce
frameworks.
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09666155510, 09849539085 or mail us - ieeefinalsemprojects@gmail.com-Visit Our Website: www.finalyearprojects.org
JAVA 2013 IEEE DATAMINING PROJECT A fast clustering based feature subset sele...IEEEGLOBALSOFTTECHNOLOGIES
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - ieeefinalsemprojects@gmail.com-Visit Our Website: www.finalyearprojects.org
Cloudsim a fast clustering-based feature subset selection algorithm for high...ecway
Final Year IEEE Projects, Final Year Projects, Academic Final Year Projects, Academic Final Year IEEE Projects, Academic Final Year IEEE Projects 2013, Academic Final Year IEEE Projects 2014, IEEE JAVA, .NET Projects, 2013 IEEE JAVA, .NET Projects, 2013 IEEE JAVA, .NET Projects in Chennai, 2013 IEEE JAVA, .NET Projects in Trichy, 2013 IEEE JAVA, .NET Projects in Karur, 2013 IEEE JAVA, .NET Projects in Erode, 2013 IEEE JAVA, .NET Projects in Madurai, 2013 IEEE JAVA, .NET Projects in Salem, 2013 IEEE JAVA, .NET Projects in Coimbatore, 2013 IEEE JAVA, .NET Projects in Tirupur, 2013 IEEE JAVA, .NET Projects in Bangalore, 2013 IEEE JAVA, .NET Projects in Hydrabad, 2013 IEEE JAVA, .NET Projects in Kerala, 2013 IEEE JAVA, .NET Projects in Namakkal, IEEE JAVA, .NET Image Processing, IEEE JAVA, .NET Face Recognition, IEEE JAVA, .NET Face Detection, IEEE JAVA, .NET Brain Tumour, IEEE JAVA, .NET Iris Recognition, IEEE JAVA, .NET Image Segmentation, Final Year JAVA, .NET Projects in Pondichery, Final Year JAVA, .NET Projects in Tamilnadu, Final Year JAVA, .NET Projects in Chennai, Final Year JAVA, .NET Projects in Trichy, Final Year JAVA, .NET Projects in Erode, Final Year JAVA, .NET Projects in Karur, Final Year JAVA, .NET Projects in Coimbatore, Final Year JAVA, .NET Projects in Tirunelveli, Final Year JAVA, .NET Projects in Madurai, Final Year JAVA, .NET Projects in Salem, Final Year JAVA, .NET Projects in Tirupur, Final Year JAVA, .NET Projects in Namakkal, Final Year JAVA, .NET Projects in Tanjore, Final Year JAVA, .NET Projects in Coimbatore, Final Year JAVA, .NET Projects in Bangalore, Final Year JAVA, .NET Projects in Hydrabad, Final Year JAVA, .NET Projects in Kerala, Final Year JAVA, .NET IEEE Projects in Pondichery, Final Year JAVA, .NET IEEE Projects in Tamilnadu, Final Year JAVA, .NET IEEE Projects in Chennai, Final Year JAVA, .NET IEEE Projects in Trichy, Final Year JAVA, .NET IEEE Projects in Erode, Final Year JAVA, .NET IEEE Projects in Karur, Final Year JAVA, .NET IEEE Projects in Coimbatore, Final Year JAVA, .NET IEEE Projects in Tirunelveli, Final Year JAVA, .NET IEEE Projects in Madurai, Final Year JAVA, .NET IEEE Projects in Salem, Final Year JAVA, .NET IEEE Projects in Tirupur, Final Year JAVA, .NET IEEE Projects in Namakkal, Final Year JAVA, .NET IEEE Projects in Tanjore, Final Year JAVA, .NET IEEE Projects in Coimbatore, Final Year JAVA, .NET IEEE Projects in Bangalore, Final Year JAVA, .NET IEEE Projects in Hydrabad, Final Year JAVA, .NET IEEE Projects in Kerala, Final Year IEEE MATLAB Projects, Final Year Projects, Academic Final Year Projects, Academic Final Year IEEE MATLAB Projects, Academic Final Year IEEE MATLAB Projects 2013, Academic Final Year IEEE MATLAB Projects 2014, IEEE MATLAB Projects, 2013 IEEE MATLAB Projects, 2013 IEEE MATLAB Projects in Chennai, 2013 IEEE MATLAB Projects in Trichy, 2013 IEEE MATLAB Projects in Karur, 2013 IEEE MATLAB Projects in Erode, 2013 IEEE MATLAB Projects in Madurai, 2013 IEEE MATLAB
A fast clustering based feature subset selection algorithm for high-dimension...ecway
Final Year IEEE Projects, Final Year Projects, Academic Final Year Projects, Academic Final Year IEEE Projects, Academic Final Year IEEE Projects 2013, Academic Final Year IEEE Projects 2014, IEEE JAVA, .NET Projects, 2013 IEEE JAVA, .NET Projects, 2013 IEEE JAVA, .NET Projects in Chennai, 2013 IEEE JAVA, .NET Projects in Trichy, 2013 IEEE JAVA, .NET Projects in Karur, 2013 IEEE JAVA, .NET Projects in Erode, 2013 IEEE JAVA, .NET Projects in Madurai, 2013 IEEE JAVA, .NET Projects in Salem, 2013 IEEE JAVA, .NET Projects in Coimbatore, 2013 IEEE JAVA, .NET Projects in Tirupur, 2013 IEEE JAVA, .NET Projects in Bangalore, 2013 IEEE JAVA, .NET Projects in Hydrabad, 2013 IEEE JAVA, .NET Projects in Kerala, 2013 IEEE JAVA, .NET Projects in Namakkal, IEEE JAVA, .NET Image Processing, IEEE JAVA, .NET Face Recognition, IEEE JAVA, .NET Face Detection, IEEE JAVA, .NET Brain Tumour, IEEE JAVA, .NET Iris Recognition, IEEE JAVA, .NET Image Segmentation, Final Year JAVA, .NET Projects in Pondichery, Final Year JAVA, .NET Projects in Tamilnadu, Final Year JAVA, .NET Projects in Chennai, Final Year JAVA, .NET Projects in Trichy, Final Year JAVA, .NET Projects in Erode, Final Year JAVA, .NET Projects in Karur, Final Year JAVA, .NET Projects in Coimbatore, Final Year JAVA, .NET Projects in Tirunelveli, Final Year JAVA, .NET Projects in Madurai, Final Year JAVA, .NET Projects in Salem, Final Year JAVA, .NET Projects in Tirupur, Final Year JAVA, .NET Projects in Namakkal, Final Year JAVA, .NET Projects in Tanjore, Final Year JAVA, .NET Projects in Coimbatore, Final Year JAVA, .NET Projects in Bangalore, Final Year JAVA, .NET Projects in Hydrabad, Final Year JAVA, .NET Projects in Kerala, Final Year JAVA, .NET IEEE Projects in Pondichery, Final Year JAVA, .NET IEEE Projects in Tamilnadu, Final Year JAVA, .NET IEEE Projects in Chennai, Final Year JAVA, .NET IEEE Projects in Trichy, Final Year JAVA, .NET IEEE Projects in Erode, Final Year JAVA, .NET IEEE Projects in Karur, Final Year JAVA, .NET IEEE Projects in Coimbatore, Final Year JAVA, .NET IEEE Projects in Tirunelveli, Final Year JAVA, .NET IEEE Projects in Madurai, Final Year JAVA, .NET IEEE Projects in Salem, Final Year JAVA, .NET IEEE Projects in Tirupur, Final Year JAVA, .NET IEEE Projects in Namakkal, Final Year JAVA, .NET IEEE Projects in Tanjore, Final Year JAVA, .NET IEEE Projects in Coimbatore, Final Year JAVA, .NET IEEE Projects in Bangalore, Final Year JAVA, .NET IEEE Projects in Hydrabad, Final Year JAVA, .NET IEEE Projects in Kerala, Final Year IEEE MATLAB Projects, Final Year Projects, Academic Final Year Projects, Academic Final Year IEEE MATLAB Projects, Academic Final Year IEEE MATLAB Projects 2013, Academic Final Year IEEE MATLAB Projects 2014, IEEE MATLAB Projects, 2013 IEEE MATLAB Projects, 2013 IEEE MATLAB Projects in Chennai, 2013 IEEE MATLAB Projects in Trichy, 2013 IEEE MATLAB Projects in Karur, 2013 IEEE MATLAB Projects in Erode, 2013 IEEE MATLAB Projects in Madurai, 2013 IEEE MATLAB
Android a fast clustering-based feature subset selection algorithm for high-...ecway
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Unsupervised Feature Selection Based on the Distribution of Features Attribut...Waqas Tariq
Since dealing with high dimensional data is computationally complex and sometimes even intractable, recently several feature reductions methods have been developed to reduce the dimensionality of the data in order to simplify the calculation analysis in various applications such as text categorization, signal processing, image retrieval, gene expressions and etc. Among feature reduction techniques, feature selection is one the most popular methods due to the preservation of the original features. However, most of the current feature selection methods do not have a good performance when fed on imbalanced data sets which are pervasive in real world applications. In this paper, we propose a new unsupervised feature selection method attributed to imbalanced data sets, which will remove redundant features from the original feature space based on the distribution of features. To show the effectiveness of the proposed method, popular feature selection methods have been implemented and compared. Experimental results on the several imbalanced data sets, derived from UCI repository database, illustrate the effectiveness of our proposed methods in comparison with the other compared methods in terms of both accuracy and the number of selected features.
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.
C LUSTERING B ASED A TTRIBUTE S UBSET S ELECTION U SING F AST A LGORITHmIJCI JOURNAL
In machine learning and data mining, attribute sel
ect is the practice of selecting a subset o
f most
consequential attributes for utilize in model const
ruction. Using an attribute select method is that t
he data
encloses many redundant or extraneous attributes. W
here redundant attributes are those which sup
ply
no supplemental information than the presently
selected attributes, and impertinent attribut
es offer
no valuable information in any context
EFFICIENT FEATURE SUBSET SELECTION MODEL FOR HIGH DIMENSIONAL DATAIJCI JOURNAL
This paper proposes a new method that intends on reducing the size of high dimensional dataset by
identifying and removing irrelevant and redundant features. Dataset reduction is important in the case of
machine learning and data mining. The measure of dependence is used to evaluate the relationship
between feature and target concept and or between features for irrelevant and redundant feature removal.
The proposed work initially removes all the irrelevant features and then a minimum spanning tree of
relevant features is constructed using Prim’s algorithm. Splitting the minimum spanning tree based on the
dependency between features leads to the generation of forests. A representative feature from each of the
forests is taken to form the final feature subset
A NEW TECHNIQUE INVOLVING DATA MINING IN PROTEIN SEQUENCE CLASSIFICATIONcscpconf
Feature selection is more accurate technique in protein sequence classification. Researchers apply some well-known classification techniques like neural networks, Genetic algorithm, Fuzzy ARTMAP, Rough Set Classifier etc for extracting features.This paper presents a review is with
three different classification models such as fuzzy ARTMAP model, neural network model and Rough set classifier model.This is followed by a new technique for classifying protein
sequences.The proposed model is typically implemented with an own designed tool using JAVA and tries to prove that it reduce the computational overheads encountered by earlier
approaches and also increase the accuracy of classification.
A Review on Feature Selection Methods For Classification TasksEditor IJCATR
In recent years, application of feature selection methods in medical datasets has greatly increased. The challenging task in
feature selection is how to obtain an optimal subset of relevant and non redundant features which will give an optimal solution without
increasing the complexity of the modeling task. Thus, there is a need to make practitioners aware of feature selection methods that have
been successfully applied in medical data sets and highlight future trends in this area. The findings indicate that most existing feature
selection methods depend on univariate ranking that does not take into account interactions between variables, overlook stability of the
selection algorithms and the methods that produce good accuracy employ more number of features. However, developing a universal
method that achieves the best classification accuracy with fewer features is still an open research area.
Hybridization of Meta-heuristics for Optimizing Routing protocol in VANETsIJERA Editor
The goal of VANET is to establish a vehicular communication system which is reliable and fast which caters to
road safety and road safety. In VANET where network fragmentation is frequent with no central control, routing
becomes a challenging task. Planning an optimal routing plan for tuning parameter configuration of routing
protocol for setting up VANET is very crucial. This is done by defining an optimization problem where
hybridization of meta-heuristics is defined. The paper contributes the idea of combining meta-heuristic
algorithm to enhance the performance of individual search method for optimization problem.
Minkowski Distance based Feature Selection Algorithm for Effective Intrusion ...IJMER
Intrusion Detection System (IDS) plays a major role in the provision of effective security to various types of networks. Moreover, Intrusion Detection System for networks need appropriate rule set for classifying network bench mark data into normal or attack patterns. Generally, each dataset is characterized by a large set of features. However, all these features will not be relevant or fully contribute in identifying an attack. Since different attacks need various subsets to provide better detection accuracy. In this paper an improved feature selection algorithm is proposed to identify the most appropriate subset of features for detecting a certain attacks. This proposed method is based on Minkowski distance feature ranking and an improved exhaustive search that selects a better combination of features. This system has been evaluated using the KDD CUP 1999 dataset and also with EMSVM [1] classifier. The experimental results show that the proposed system provides high classification accuracy and low false alarm rate when applied on the reduced feature subsets
Decentralized data fusion approach is one in which features are extracted and processed individually and finally fused to obtain global estimates. The paper presents decentralized data fusion algorithm using factor analysis model. Factor analysis is a statistical method used to study the effect and interdependence of various factors within a system. The proposed algorithm fuses accelerometer and gyroscope data in an inertial measurement unit (IMU). Simulations are carried out on Matlab platform to illustrate the algorithm.
DATA PARTITIONING FOR ENSEMBLE MODEL BUILDINGijccsa
In distributed ensemble model-building algorithms, the performance and statistical validity of models are
dependent on sizes of the input data partitions as well as the distribution of records among the partitions.
Failure to correctly select and pre-process the data often results in the models which are not stable and do
not perform well. This article introduces an optimized approach to building the ensemble models for very
large data sets in distributed map-reduce environments using Pass-Stream-Merge (PSM) algorithm. To
ensure the model correctness the input data is randomly distributed using the facilities built into mapreduce
frameworks.
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09666155510, 09849539085 or mail us - ieeefinalsemprojects@gmail.com-Visit Our Website: www.finalyearprojects.org
JAVA 2013 IEEE DATAMINING PROJECT A fast clustering based feature subset sele...IEEEGLOBALSOFTTECHNOLOGIES
To Get any Project for CSE, IT ECE, EEE Contact Me @ 09849539085, 09966235788 or mail us - ieeefinalsemprojects@gmail.com-Visit Our Website: www.finalyearprojects.org
Cloudsim a fast clustering-based feature subset selection algorithm for high...ecway
Final Year IEEE Projects, Final Year Projects, Academic Final Year Projects, Academic Final Year IEEE Projects, Academic Final Year IEEE Projects 2013, Academic Final Year IEEE Projects 2014, IEEE JAVA, .NET Projects, 2013 IEEE JAVA, .NET Projects, 2013 IEEE JAVA, .NET Projects in Chennai, 2013 IEEE JAVA, .NET Projects in Trichy, 2013 IEEE JAVA, .NET Projects in Karur, 2013 IEEE JAVA, .NET Projects in Erode, 2013 IEEE JAVA, .NET Projects in Madurai, 2013 IEEE JAVA, .NET Projects in Salem, 2013 IEEE JAVA, .NET Projects in Coimbatore, 2013 IEEE JAVA, .NET Projects in Tirupur, 2013 IEEE JAVA, .NET Projects in Bangalore, 2013 IEEE JAVA, .NET Projects in Hydrabad, 2013 IEEE JAVA, .NET Projects in Kerala, 2013 IEEE JAVA, .NET Projects in Namakkal, IEEE JAVA, .NET Image Processing, IEEE JAVA, .NET Face Recognition, IEEE JAVA, .NET Face Detection, IEEE JAVA, .NET Brain Tumour, IEEE JAVA, .NET Iris Recognition, IEEE JAVA, .NET Image Segmentation, Final Year JAVA, .NET Projects in Pondichery, Final Year JAVA, .NET Projects in Tamilnadu, Final Year JAVA, .NET Projects in Chennai, Final Year JAVA, .NET Projects in Trichy, Final Year JAVA, .NET Projects in Erode, Final Year JAVA, .NET Projects in Karur, Final Year JAVA, .NET Projects in Coimbatore, Final Year JAVA, .NET Projects in Tirunelveli, Final Year JAVA, .NET Projects in Madurai, Final Year JAVA, .NET Projects in Salem, Final Year JAVA, .NET Projects in Tirupur, Final Year JAVA, .NET Projects in Namakkal, Final Year JAVA, .NET Projects in Tanjore, Final Year JAVA, .NET Projects in Coimbatore, Final Year JAVA, .NET Projects in Bangalore, Final Year JAVA, .NET Projects in Hydrabad, Final Year JAVA, .NET Projects in Kerala, Final Year JAVA, .NET IEEE Projects in Pondichery, Final Year JAVA, .NET IEEE Projects in Tamilnadu, Final Year JAVA, .NET IEEE Projects in Chennai, Final Year JAVA, .NET IEEE Projects in Trichy, Final Year JAVA, .NET IEEE Projects in Erode, Final Year JAVA, .NET IEEE Projects in Karur, Final Year JAVA, .NET IEEE Projects in Coimbatore, Final Year JAVA, .NET IEEE Projects in Tirunelveli, Final Year JAVA, .NET IEEE Projects in Madurai, Final Year JAVA, .NET IEEE Projects in Salem, Final Year JAVA, .NET IEEE Projects in Tirupur, Final Year JAVA, .NET IEEE Projects in Namakkal, Final Year JAVA, .NET IEEE Projects in Tanjore, Final Year JAVA, .NET IEEE Projects in Coimbatore, Final Year JAVA, .NET IEEE Projects in Bangalore, Final Year JAVA, .NET IEEE Projects in Hydrabad, Final Year JAVA, .NET IEEE Projects in Kerala, Final Year IEEE MATLAB Projects, Final Year Projects, Academic Final Year Projects, Academic Final Year IEEE MATLAB Projects, Academic Final Year IEEE MATLAB Projects 2013, Academic Final Year IEEE MATLAB Projects 2014, IEEE MATLAB Projects, 2013 IEEE MATLAB Projects, 2013 IEEE MATLAB Projects in Chennai, 2013 IEEE MATLAB Projects in Trichy, 2013 IEEE MATLAB Projects in Karur, 2013 IEEE MATLAB Projects in Erode, 2013 IEEE MATLAB Projects in Madurai, 2013 IEEE MATLAB
A fast clustering based feature subset selection algorithm for high-dimension...ecway
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Android a fast clustering-based feature subset selection algorithm for high-...ecway
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Unsupervised Feature Selection Based on the Distribution of Features Attribut...Waqas Tariq
Since dealing with high dimensional data is computationally complex and sometimes even intractable, recently several feature reductions methods have been developed to reduce the dimensionality of the data in order to simplify the calculation analysis in various applications such as text categorization, signal processing, image retrieval, gene expressions and etc. Among feature reduction techniques, feature selection is one the most popular methods due to the preservation of the original features. However, most of the current feature selection methods do not have a good performance when fed on imbalanced data sets which are pervasive in real world applications. In this paper, we propose a new unsupervised feature selection method attributed to imbalanced data sets, which will remove redundant features from the original feature space based on the distribution of features. To show the effectiveness of the proposed method, popular feature selection methods have been implemented and compared. Experimental results on the several imbalanced data sets, derived from UCI repository database, illustrate the effectiveness of our proposed methods in comparison with the other compared methods in terms of both accuracy and the number of selected features.
The International Journal of Engineering and Science (The IJES)theijes
The International Journal of Engineering & Science is aimed at providing a platform for researchers, engineers, scientists, or educators to publish their original research results, to exchange new ideas, to disseminate information in innovative designs, engineering experiences and technological skills. It is also the Journal's objective to promote engineering and technology education. All papers submitted to the Journal will be blind peer-reviewed. Only original articles will be published.
Searching is a very tedious process because,we all be giving the different keywords to the search engine until we land up with the best results.
There is no clustering approach is achieved in existing.
Feature subset selection is an effective way for reducing dimensionality,removing irrelavant data,increasing learing accuracy and improving result comprehensibility.
XML based cluster formation is achieved in order to have space and language competency
A Threshold fuzzy entropy based feature selection method applied in various b...IJMER
Large amount of data have been stored and manipulated using various database
technologies. Processing all the attributes for the particular means is the difficult task. To avoid such
difficulties, feature selection process is processed.In this paper,we are collect a eight various benchmark
datasets from UCI repository.Feature selection process is carried out using fuzzy entropy based
relevance measure algorithm and follows three selection strategies like Mean selection strategy,Half
selection strategy and Neural network for threshold selection strategy. After the features are selected,
they are evaluated using Radial Basis Function (RBF) network,Stacking,Bagging,AdaBoostM1 and Antminer
classification methodologies.The test results depicts that Neural network for threshold selection
strategy works well in selecting features and Ant-miner methodology works best in bringing out better
accuracy with selected feature than processing with original dataset.The obtained result of this
experiment shows that clearly the Ant-miner is superiority than other classifiers.Thus, this proposed Antminer
algorithm could be a more suitable method for producing good results with fewer features than
the original datasets.
New Feature Selection Model Based Ensemble Rule Classifiers Method for Datase...ijaia
Feature selection and classification task are an essential process in dealing with large data sets that
comprise numerous number of input attributes. There are many search methods and classifiers that have
been used to find the optimal number of attributes. The aim of this paper is to find the optimal set of
attributes and improve the classification accuracy by adopting ensemble rule classifiers method. Research
process involves 2 phases; finding the optimal set of attributes and ensemble classifiers method for
classification task. Results are in terms of percentage of accuracy and number of selected attributes and
rules generated. 6 datasets were used for the experiment. The final output is an optimal set of attributes
with ensemble rule classifiers method. The experimental results conducted on public real dataset
demonstrate that the ensemble rule classifiers methods consistently show improve classification accuracy
on the selected dataset. Significant improvement in accuracy and optimal set of attribute selected is
achieved by adopting ensemble rule classifiers method.
A Survey on Constellation Based Attribute Selection Method for High Dimension...IJERA Editor
Attribute Selection is an important topic in Data Mining, because it is the effective way for reducing dimensionality, removing irrelevant data, removing redundant data, & increasing accuracy of the data. It is the process of identifying a subset of the most useful attributes that produces compatible results as the original entire set of attribute. Cluster analysis or clustering is the task of grouping a set of objects in such a way that objects in the same group called a cluster are more similar in some sense or another to each other than to those in other groups (Clusters). There are various approaches & techniques for attribute subset selection namely Wrapper approach, Filter Approach, Relief Algorithm, Distributional clustering etc. But each of one having some disadvantages like unable to handle large volumes of data, computational complexity, accuracy is not guaranteed, difficult to evaluate and redundancy detection etc. To get the upper hand on some of these issues in attribute selection this paper proposes a technique that aims to design an effective clustering based attribute selection method for high dimensional data. Initially, attributes are divided into clusters by using graph-based clustering method like minimum spanning tree (MST). In the second step, the most representative attribute that is strongly related to target classes is selected from each cluster to form a subset of attributes. The purpose is to increase the level of accuracy, reduce dimensionality; shorter training time and improves generalization by reducing over fitting.
Feature selection is a problem closely related to dimensionality reduction. A commonly used
approach in feature selection is ranking the individual features according to some criteria and
then search for an optimal feature subset based on an evaluation criterion to test the optimality.
The objective of this work is to predict more accurately the presence of Learning Disability
(LD) in school-aged children with reduced number of symptoms. For this purpose, a novel
hybrid feature selection approach is proposed by integrating a popular Rough Set based feature
ranking process with a modified backward feature elimination algorithm. The approach follows
a ranking of the symptoms of LD according to their importance in the data domain. Each
symptoms significance or priority values reflect its relative importance to predict LD among the
various cases. Then by eliminating least significant features one by one and evaluating the
feature subset at each stage of the process, an optimal feature subset is generated. The
experimental results shows the success of the proposed method in removing redundant
attributes efficiently from the LD dataset without sacrificing the classification performance.
Feature Selection : A Novel Approach for the Prediction of Learning Disabilit...csandit
Feature selection is a problem closely related to dimensionality reduction. A commonly used
approach in feature selection is ranking the individual features according to some criteria and
then search for an optimal feature subset based on an evaluation criterion to test the optimality.
The objective of this work is to predict more accurately the presence of Learning Disability
(LD) in school-aged children with reduced number of symptoms. For this purpose, a novel
hybrid feature selection approach is proposed by integrating a popular Rough Set based feature
ranking process with a modified backward feature elimination algorithm. The approach follows
a ranking of the symptoms of LD according to their importance in the data domain. Each
symptoms significance or priority values reflect its relative importance to predict LD among the
various cases. Then by eliminating least significant features one by one and evaluating the
feature subset at each stage of the process, an optimal feature subset is generated. The
experimental results shows the success of the proposed method in removing redundant
attributes efficiently from the LD dataset without sacrificing the classification performance.
Threshold benchmarking for feature ranking techniquesjournalBEEI
In prediction modeling, the choice of features chosen from the original feature set is crucial for accuracy and model interpretability. Feature ranking techniques rank the features by its importance but there is no consensus on the number of features to be cut-off. Thus, it becomes important to identify a threshold value or range, so as to remove the redundant features. In this work, an empirical study is conducted for identification of the threshold benchmark for feature ranking algorithms. Experiments are conducted on Apache Click dataset with six popularly used ranker techniques and six machine learning techniques, to deduce a relationship between the total number of input features (N) to the threshold range. The area under the curve analysis shows that ≃ 33-50% of the features are necessary and sufficient to yield a reasonable performance measure, with a variance of 2%, in defect prediction models. Further, we also find that the log2(N) as the ranker threshold value represents the lower limit of the range.
International Journal of Engineering Research and Development (IJERD)IJERD Editor
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International Journal of Engineering Research and Development (IJERD)IJERD Editor
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Optimal Feature Selection from VMware ESXi 5.1 Feature Setijccmsjournal
A study of VMware ESXi 5.1 server has been carried out to find the optimal set of parameters which suggest usage of different resources of the server. Feature selection algorithms have been used to extract the optimum set of parameters of the data obtained from VMware ESXi 5.1 server using esxtop command. Multiple virtual machines (VMs) are running in the mentioned server. K-means algorithm is used for clustering the VMs. The goodness of each cluster is determined by Davies Bouldin index and Dunn index respectively. The best cluster is further identified by the determined indices. The features of the best cluster are considered into a set of optimal parameters.
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A fast clustering based feature subset selection algorithm for high-dimensional data
1. A Fast Clustering-Based Feature Subset Selection Algorithm for
High-Dimensional Data
ABSTRACT:
Feature selection involves identifying a subset of the most useful features that produces compatible results as
the original entire set of features. A feature selection algorithm may be evaluated from both the efficiency and
effectiveness points of view. While the efficiency concerns the time required to find a subset of features, the
effectiveness is related to the quality of the subset of features. Based on these criteria, a fast clustering-based
feature selection algorithm (FAST) is proposed and experimentally evaluated in this paper.
The FAST algorithm works in two steps. In the first step, features are divided into clusters by using graph-
theoretic clustering methods. In the second step, the most representative feature that is strongly related to target
classes is selected from each cluster to form a subset of features. Features in different clusters are relatively
independent; the clustering-based strategy of FAST has a high probability of producing a subset of useful and
independent features. To ensure the efficiency of FAST, we adopt the efficient minimum-spanning tree (MST)
clustering method. The efficiency and effectiveness of the FAST algorithm are evaluated through an empirical
study.
Extensive experiments are carried out to compare FAST and several representative feature selection algorithms,
namely, FCBF, ReliefF, CFS, Consist, and FOCUS-SF, with respect to four types of well-known classifiers,
namely, the probabilitybased Naive Bayes, the tree-based C4.5, the instance-based IB1, and the rule-based
RIPPER before and after feature selection. The results, on 35 publicly available real-world high-dimensional
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2. image, microarray, and text data, demonstrate that the FAST not only produces smaller subsets of features but
also improves the performances of the four types of classifiers.
EXISTING SYSTEM:
The embedded methods incorporate feature selection as a part of the training process and are usually specific to
given learning algorithms, and therefore may be more efficient than the other three categories. Traditional
machine learning algorithms like decision trees or artificial neural networks are examples of embedded
approaches. The wrapper methods use the predictive accuracy of a predetermined learning algorithm to
determine the goodness of the selected subsets, the accuracy of the learning algorithms is usually high.
However, the generality of the selected features is limited and the computational complexity is large. The filter
methods are independent of learning algorithms, with good generality. Their computational complexity is low,
but the accuracy of the learning algorithms is not guaranteed. The hybrid methods are a combination of filter
and wrapper methods by using a filter method to reduce search space that will be considered by the subsequent
wrapper. They mainly focus on combining filter and wrapper methods to achieve the best possible performance
with a particular learning algorithm with similar time complexity of the filter methods.
DISADVANTAGES:
1. The generality of the selected features is limited and the computational complexity is large.
2. Their computational complexity is low, but the accuracy of the learning algorithms is not guaranteed.
3. The hybrid methods are a combination of filter and wrapper methods by using a filter method to reduce
search space that will be considered by the subsequent wrapper.
PROPOSED SYSTEM:
Feature subset selection can be viewed as the process of identifying and removing as many irrelevant and
redundant features as possible. This is because irrelevant features do not contribute to the predictive accuracy
and redundant features do not redound to getting a better predictor for that they provide mostly information
which is already present in other feature(s). Of the many feature subset selection algorithms, some can
effectively eliminate irrelevant features but fail to handle redundant features yet some of others can eliminate
the irrelevant while taking care of the redundant features.
3. Our proposed FAST algorithm falls into the second group. Traditionally, feature subset selection research has
focused on searching for relevant features. A well-known example is Relief which weighs each feature
according to its ability to discriminate instances under different targets based on distance-based criteria
function. However, Relief is ineffective at removing redundant features as two predictive but highly correlated
features are likely both to be highly weighted. Relief-F extends Relief, enabling this method to work with noisy
and incomplete data sets and to deal with multiclass problems, but still cannot identify redundant features.
ADVANTAGES:
Good feature subsets contain features highly correlated with (predictive of) the class, yet uncorrelated
with (not predictive of) each other.
The efficiently and effectively deal with both irrelevant and redundant features, and obtain a good
feature subset.
Generally all the six algorithms achieve significant reduction of dimensionality by selecting only a small
portion of the original features.
The null hypothesis of the Friedman test is that all the feature selection algorithms are equivalent in
terms of runtime.
HARDWARE & SOFTWARE REQUIREMENTS:
HARDWARE REQUIREMENT:
Processor - Pentium –IV
Speed - 1.1 GHz
RAM - 256 MB (min)
Hard Disk - 20 GB
Floppy Drive - 1.44 MB
Key Board - Standard Windows Keyboard
Mouse - Two or Three Button Mouse
4. Monitor - SVGA
SOFTWARE REQUIREMENTS:
Operating System : Windows XP
Front End : Java JDK 1.7
Scripts : JavaScript.
Tools : Netbeans
Database : SQL Server or MS-Access
Database Connectivity : JDBC.
FLOW CHART:
Data set
Irrelevant feature removal
Minimum Spinning tree
constriction
Tree partition & representation
feature selection
5. MAIN MODULES:-
DISTRIBUTED CLUSTERING:
SUBSET SELECTION ALGORITHM:
TIME COMPLEXITY:
MICROARRAY DATA:
DATA RESOURCE:
IRRELEVANT FEATURE:
MODULE DESCRIPTION:
DISTRIBUTED CLUSTERING:
The Distributional clustering has been used to cluster words into groups based either on their participation in
particular grammatical relations with other words by Pereira et al. or on the distribution of class labels
associated with each word by Baker and McCallum . As distributional clustering of words are agglomerative in
nature, and result in suboptimal word clusters and high computational cost, proposed a new information-
theoretic divisive algorithm for word clustering and applied it to text classification. proposed to cluster features
using a special metric of distance, and then makes use of the of the resulting cluster hierarchy to choose the
most relevant attributes. Unfortunately, the cluster evaluation measure based on distance does not identify a
feature subset that allows the classifiers to improve their original performance accuracy. Furthermore, even
compared with other feature selection methods, the obtained accuracy is lower.
6. SUBSET SELECTION ALGORITHM:
The Irrelevant features, along with redundant features, severely affect the accuracy of the learning machines.
Thus, feature subset selection should be able to identify and remove as much of the irrelevant and redundant
information as possible. Moreover, “good feature subsets contain features highly correlated with (predictive of)
the class, yet uncorrelated with (not predictive of) each other. Keeping these in mind, we develop a novel
algorithm which can efficiently and effectively deal with both irrelevant and redundant features, and obtain a
good feature subset.
TIME COMPLEXITY:
The major amount of work for Algorithm 1 involves the computation of SU values for TR relevance and F-
Correlation, which has linear complexity in terms of the number of instances in a given data set. The first part of
the algorithm has a linear time complexity in terms of the number of features m. Assuming features are selected
as relevant ones in the first part, when k ¼ only one feature is selected.
MICROARRAY DATA:
The proportion of selected features has been improved by each of the six algorithms compared with that on the
given data sets. This indicates that the six algorithms work well with microarray data. FAST ranks 1 again with
the proportion of selected features of 0.71 percent. Of the six algorithms, only CFS cannot choose features for
two data sets whose dimensionalities are 19,994 and 49,152, respectively.
DATA RESOURCE:
The purposes of evaluating the performance and effectiveness of our proposed FAST algorithm, verifying
whether or not the method is potentially useful in practice, and allowing other researchers to confirm our
results, 35 publicly available data sets1 were used. The numbers of features of the 35 data sets vary from 37 to
49, 52 with a mean of 7,874. The dimensionalities of the 54.3 percent data sets exceed 5,000, of which 28.6
percent data sets have more than 10,000 features. The 35 data sets cover a range of application domains such as
text, image and bio microarray data classification in the corresponding statistical information that for the data
sets with continuous-valued features, the well-known off-the-shelf MDL method was used to discredit the
continuous values.
IRRELEVANT FEATURE:
7. The irrelevant feature removal is straightforward once the right relevance measure is defined or selected, while
the redundant feature elimination is a bit of sophisticated. In our proposed FAST algorithm, it involves 1.the
construction of the minimum spanning tree from a weighted complete graph; 2. The partitioning of the MST
into a forest with each tree representing a cluster; and 3.the selection of representative features from the
clusters.
MODULE DESCRIPTION:
USER MODULE:
In this module, Users are having authentication and security to access the detail which is presented in the
ontology system. Before accessing or searching the details user should have the account in that otherwise they
should register first.
DISTRIBUTED CLUSTERING:
The Distributional clustering has been used to cluster words into groups based either on their participation in
particular grammatical relations with other words by Pereira et al. or on the distribution of class labels
associated with each word by Baker and McCallum . As distributional clustering of words are agglomerative in
nature, and result in suboptimal word clusters and high computational cost, proposed a new information-
theoretic divisive algorithm for word clustering and applied it to text classification.
We proposed to cluster features using a special metric of distance, and then makes use of the of the resulting
cluster hierarchy to choose the most relevant attributes. Unfortunately, the cluster evaluation measure based on
distance does not identify a feature subset that allows the classifiers to improve their original performance
accuracy. Furthermore, even compared with other feature selection methods, the obtained accuracy is lower.
SUBSET SELECTION ALGORITHM:
The Irrelevant features, along with redundant features, severely affect the accuracy of the learning machines.
Thus, feature subset selection should be able to identify and remove as much of the irrelevant and redundant
information as possible. Moreover, “good feature subsets contain features highly correlated with (predictive of)
the class, yet uncorrelated with (not predictive of) each other. Keeping these in mind, we develop a novel
8. algorithm which can efficiently and effectively deal with both irrelevant and redundant features, and obtain a
good feature subset.
TIME COMPLEXITY:
The major amount of work for Algorithm 1 involves the computation of SU values for TR relevance and F-
Correlation, which has linear complexity in terms of the number of instances in a given data set. The first part of
the algorithm has a linear time complexity in terms of the number of features m. Assuming features are selected
as relevant ones in the first part, when k ¼ only one feature is selected.
.CONCLUSION:
In this paper, we have presented a novel clustering-based feature subset selection algorithm for high
dimensional data. The algorithm involves 1) removing irrelevant features, 2) constructing a minimum spanning
tree from relative ones, and 3) partitioning the MST and selecting representative features. In the proposed
algorithm, a cluster consists of features. Each cluster is treated as a single feature and thus dimensionality is
drastically reduced. Generally, the proposed algorithm obtained the best proportion of selected features, the best
runtime, and the best classification accuracy confirmed the conclusions.
We have presented a novel clustering-based feature subset selection algorithm for high dimensional data. The
algorithm involves removing irrelevant features, constructing a minimum spanning tree from relative ones, and
partitioning the MST and selecting representative features. In the proposed algorithm, a cluster consists of
features. Each cluster is treated as a single feature and thus dimensionality is drastically reduced.
We have compared the performance of the proposed algorithm with those of the five well-known feature
selection algorithms FCBF, CFS, Consist, and FOCUS-SF on the publicly available image, microarray, and text
data from the four different aspects of the proportion of selected features, runtime, classification accuracy of a
given classifier, and the Win/Draw/Loss record.
Generally, the proposed algorithm obtained the best proportion of selected features, the best runtime, and the
best classification accuracy for Naive, and RIPPER, and the second best classification accuracy for IB1. The
Win/Draw/Loss records confirmed the conclusions. We also found that FAST obtains the rank of 1 for
microarray data, the rank of 2 for text data, and the rank of 3 for image data in terms of classification accuracy
of the four different types of classifiers, and CFS is a good alternative. At the same time, FCBF is a good
alternative for image and text data. Moreover, Consist, and FOCUS-SF are alternatives for text data. For the
9. future work, we plan to explore different types of correlation measures, and study some formal properties of
feature space.
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