Robust and stable gene selection via Maximum–Minimum Correntropy Criterion
contributor author | مجید محمدی | en |
contributor author | حسین شریفی نوقابی | en |
contributor author | قوشه عابدهدتنی | en |
contributor author | حبیب رجبی مشهدی | en |
contributor author | Majeed Mohammadi | fa |
contributor author | Hossein Sharifi Noghabi | fa |
contributor author | Ghosheh Abed Hodtani | fa |
contributor author | Habib Rajabi Mashhadi | fa |
date accessioned | 2020-06-06T13:27:47Z | |
date available | 2020-06-06T13:27:47Z | |
date issued | 2016 | |
identifier uri | https://libsearch.um.ac.ir:443/fum/handle/fum/3355851?locale-attribute=en&show=full | |
description abstract | One of the central challenges in cancer research is identifying significant genes among thousands of others on a microarray. Since preventing outbreak and progression of cancer is the ultimate goal in bioinformatics and computational biology, detection of genes that are most involved is vital and crucial. In this article, we propose a Maximum–Minimum Correntropy Criterion (MMCC) approach for selection of informative genes from microarray data sets which is stable, fast and robust against diverse noise and outliers and competitively accurate in comparison with other algorithms. Moreover, via an evolutionary optimization process, the optimal number of features for each data set is determined. Through broad experimental evaluation, MMCC is proved to be significantly better compared to other well-known gene selection algorithms for 25 commonly used microarray data sets. Surprisingly, high accuracy in classification by Support Vector Machine (SVM) is achieved by less than 10 genes selected by MMCC in all of the cases. | en |
language | English | |
title | Robust and stable gene selection via Maximum–Minimum Correntropy Criterion | en |
type | Journal Paper | |
contenttype | External Fulltext | |
subject keywords | Microarray | en |
subject keywords | Gene selection | en |
subject keywords | Correntropy | en |
journal title | Genomics | fa |
pages | 83-87 | |
journal volume | 107 | |
journal issue | 2 | |
identifier link | https://profdoc.um.ac.ir/paper-abstract-1054066.html | |
identifier articleid | 1054066 |
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