Literature DB >> 32890978

GeFeS: A generalized wrapper feature selection approach for optimizing classification performance.

Golnaz Sahebi1, Parisa Movahedi2, Masoumeh Ebrahimi3, Tapio Pahikkala2, Juha Plosila2, Hannu Tenhunen3.   

Abstract

In this paper, we propose a generalized wrapper-based feature selection, called GeFeS, which is based on a parallel new intelligent genetic algorithm (GA). The proposed GeFeS works properly under different numerical dataset dimensions and sizes, carefully tries to avoid overfitting and significantly enhances classification accuracy. To make the GA more accurate, robust and intelligent, we have proposed a new operator for features weighting, improved the mutation and crossover operators, and integrated nested cross-validation into the GA process to properly validate the learning model. The k-nearest neighbor (kNN) classifier is utilized to evaluate the goodness of selected features. We have evaluated the efficiency of GeFeS on various datasets selected from the UCI machine learning repository. The performance is compared with state-of-the-art classification and feature selection methods. The results demonstrate that GeFeS can significantly generalize the proposed multi-population intelligent genetic algorithm under different sizes of two-class and multi-class datasets. We have achieved the average classification accuracy of 95.83%, 97.62%, 99.02%, 98.51%, and 94.28% while reducing the number of features from 56 to 28, 34 to 18, 279 to 135, 30 to 16, and 19 to 9 under lung cancer, dermatology, arrhythmia, WDBC, and hepatitis, respectively.
Copyright © 2020 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Data mining; Evolutionary computing; Feature selection; Machine learning; Medical datasets; Overfitting; Parallel computing

Mesh:

Year:  2020        PMID: 32890978     DOI: 10.1016/j.compbiomed.2020.103974

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  4 in total

1.  Decoding clinical biomarker space of COVID-19: Exploring matrix factorization-based feature selection methods.

Authors:  Farshad Saberi-Movahed; Mahyar Mohammadifard; Adel Mehrpooya; Mohammad Rezaei-Ravari; Kamal Berahmand; Mehrdad Rostami; Saeed Karami; Mohammad Najafzadeh; Davood Hajinezhad; Mina Jamshidi; Farshid Abedi; Mahtab Mohammadifard; Elnaz Farbod; Farinaz Safavi; Mohammadreza Dorvash; Negar Mottaghi-Dastjerdi; Shahrzad Vahedi; Mahdi Eftekhari; Farid Saberi-Movahed; Hamid Alinejad-Rokny; Shahab S Band; Iman Tavassoly
Journal:  Comput Biol Med       Date:  2022-04-05       Impact factor: 6.698

2.  Developing Multiagent E-Learning System-Based Machine Learning and Feature Selection Techniques.

Authors:  Shrouk H Hessen; Hatem M Abdul-Kader; Ayman E Khedr; Rashed K Salem
Journal:  Comput Intell Neurosci       Date:  2022-01-30

3.  Zoo: Selecting Transcriptomic and Methylomic Biomarkers by Ensembling Animal-Inspired Swarm Intelligence Feature Selection Algorithms.

Authors:  Yuanyuan Han; Lan Huang; Fengfeng Zhou
Journal:  Genes (Basel)       Date:  2021-11-18       Impact factor: 4.096

4.  Decoding Clinical Biomarker Space of COVID-19: Exploring Matrix Factorization-based Feature Selection Methods.

Authors:  Farshad Saberi-Movahed; Mahyar Mohammadifard; Adel Mehrpooya; Mahtab Mohammadifard; Farid Saberi-Movahed; Iman Tavassoly; Mohammad Rezaei-Ravari; Kamal Berahmand; Mehrdad Rostami; Saeed Karami; Mohammad Najafzadeh; Davood Hajinezhad; Mina Jamshidi; Farshid Abedi; Elnaz Farbod; Farinaz Safavi; Mohammadreza Dorvash; Shahrzad Vahedi; Mahdi Eftekhari
Journal:  medRxiv       Date:  2021-07-09
  4 in total

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