A Hybrid Neuro-Fuzzy and Feature Reduction Model for Classification
The evolvement of the fuzzy system has shown influential and successful in many universal approximation capabilities and applications. This paper proposes a hybrid Neuro-Fuzzy and Feature Reduction (NF-FR) model for data analysis. This proposed NF-FR model uses a feature-based class belongingness fu...
Main Authors: | , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Hindawi Limited
2020-01-01
|
Series: | Advances in Fuzzy Systems |
Online Access: | http://dx.doi.org/10.1155/2020/4152049 |
id |
doaj-860d775e6ed64f9aa850212cb7cd32e9 |
---|---|
record_format |
Article |
spelling |
doaj-860d775e6ed64f9aa850212cb7cd32e92020-11-25T02:19:49ZengHindawi LimitedAdvances in Fuzzy Systems1687-71011687-711X2020-01-01202010.1155/2020/41520494152049A Hybrid Neuro-Fuzzy and Feature Reduction Model for ClassificationHimansu Das0Bighnaraj Naik1H. S. Behera2Department of Information Technology, Veer Surendra Sai University of Technology, Burla, Sambalpur 768018, Odisha, IndiaDepartment of Computer Application, Veer Surendra Sai University of Technology, Burla, Sambalpur 768018, Odisha, IndiaDepartment of Information Technology, Veer Surendra Sai University of Technology, Burla, Sambalpur 768018, Odisha, IndiaThe evolvement of the fuzzy system has shown influential and successful in many universal approximation capabilities and applications. This paper proposes a hybrid Neuro-Fuzzy and Feature Reduction (NF-FR) model for data analysis. This proposed NF-FR model uses a feature-based class belongingness fuzzification process for all the patterns. During the fuzzification process, all the features are expanded based on the number of classes available in the dataset. It helps to deal with the uncertainty issues and assists the Artificial Neural Network- (ANN-) based model to achieve better performance. However, the complexity of the problem increases due to this expansion of input features in the fuzzification process. These expanded features may not always contribute significantly to the model. To overcome this problem, feature reduction (FR) is used to filter out the insignificant features, resulting the network less computational cost. These reduced significant features are used in the ANN-based model to classify the data. The effectiveness of this proposed model is tested and validated with ten benchmark datasets (both balanced and unbalanced) to demonstrate the performance of the proposed NF-FR model. The performance comparison of the NF-FR model with other counterparts has been carried out based on various performance measures such as classification accuracy, root means square error, precision, recall, and f-measure for quantitative analysis of the results. The obtained simulated results have been tested using the Friedman, Holm, and ANOVA tests under the null hypothesis for statistical validity and correctness proof of the results. The result analysis and statistical analysis show that the NF-FR model has achieved a considerable improvement in accuracy and is found to be efficient in eliminating redundant and noisy information.http://dx.doi.org/10.1155/2020/4152049 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Himansu Das Bighnaraj Naik H. S. Behera |
spellingShingle |
Himansu Das Bighnaraj Naik H. S. Behera A Hybrid Neuro-Fuzzy and Feature Reduction Model for Classification Advances in Fuzzy Systems |
author_facet |
Himansu Das Bighnaraj Naik H. S. Behera |
author_sort |
Himansu Das |
title |
A Hybrid Neuro-Fuzzy and Feature Reduction Model for Classification |
title_short |
A Hybrid Neuro-Fuzzy and Feature Reduction Model for Classification |
title_full |
A Hybrid Neuro-Fuzzy and Feature Reduction Model for Classification |
title_fullStr |
A Hybrid Neuro-Fuzzy and Feature Reduction Model for Classification |
title_full_unstemmed |
A Hybrid Neuro-Fuzzy and Feature Reduction Model for Classification |
title_sort |
hybrid neuro-fuzzy and feature reduction model for classification |
publisher |
Hindawi Limited |
series |
Advances in Fuzzy Systems |
issn |
1687-7101 1687-711X |
publishDate |
2020-01-01 |
description |
The evolvement of the fuzzy system has shown influential and successful in many universal approximation capabilities and applications. This paper proposes a hybrid Neuro-Fuzzy and Feature Reduction (NF-FR) model for data analysis. This proposed NF-FR model uses a feature-based class belongingness fuzzification process for all the patterns. During the fuzzification process, all the features are expanded based on the number of classes available in the dataset. It helps to deal with the uncertainty issues and assists the Artificial Neural Network- (ANN-) based model to achieve better performance. However, the complexity of the problem increases due to this expansion of input features in the fuzzification process. These expanded features may not always contribute significantly to the model. To overcome this problem, feature reduction (FR) is used to filter out the insignificant features, resulting the network less computational cost. These reduced significant features are used in the ANN-based model to classify the data. The effectiveness of this proposed model is tested and validated with ten benchmark datasets (both balanced and unbalanced) to demonstrate the performance of the proposed NF-FR model. The performance comparison of the NF-FR model with other counterparts has been carried out based on various performance measures such as classification accuracy, root means square error, precision, recall, and f-measure for quantitative analysis of the results. The obtained simulated results have been tested using the Friedman, Holm, and ANOVA tests under the null hypothesis for statistical validity and correctness proof of the results. The result analysis and statistical analysis show that the NF-FR model has achieved a considerable improvement in accuracy and is found to be efficient in eliminating redundant and noisy information. |
url |
http://dx.doi.org/10.1155/2020/4152049 |
work_keys_str_mv |
AT himansudas ahybridneurofuzzyandfeaturereductionmodelforclassification AT bighnarajnaik ahybridneurofuzzyandfeaturereductionmodelforclassification AT hsbehera ahybridneurofuzzyandfeaturereductionmodelforclassification AT himansudas hybridneurofuzzyandfeaturereductionmodelforclassification AT bighnarajnaik hybridneurofuzzyandfeaturereductionmodelforclassification AT hsbehera hybridneurofuzzyandfeaturereductionmodelforclassification |
_version_ |
1715511590612107264 |