Boosting Atomic Orbit Search Using Dynamic-Based Learning for Feature Selection; Mathematics; Vol. 9, iss. 21

Bibliografiske detaljer
Parent link:Mathematics
Vol. 9, iss. 21.— 2021.— [2786, 17 p.]
Institution som forfatter: Национальный исследовательский Томский политехнический университет Инженерная школа информационных технологий и робототехники Отделение информационных технологий
Andre forfattere: Mohamed Abd Elaziz, Laith A. Abualigah, Dalia Yo. Yousri, Oliva Navarro D. A. Diego Alberto, Mohammed A. A. Al-Qaness, Mohammad H. Nadimi-Shahraki, Ewees A. A. Ahmed, Songfeng L. Lu, Rehab A. I. Ali Ibrahim
Summary:Title screen
Feature selection (FS) is a well-known preprocess step in soft computing and machine learning algorithms. It plays a critical role in different real-world applications since it aims to determine the relevant features and remove other ones. This process (i.e., FS) reduces the time and space complexity of the learning technique used to handle the collected data. The feature selection methods based on metaheuristic (MH) techniques established their performance over all the conventional FS methods. So, in this paper, we presented a modified version of new MH techniques named Atomic Orbital Search (AOS) as FS technique. This is performed using the advances of dynamic opposite-based learning (DOL) strategy that is used to enhance the ability of AOS to explore the search domain. This is performed by increasing the diversity of the solutions during the searching process and updating the search domain. A set of eighteen datasets has been used to evaluate the efficiency of the developed FS approach, named AOSD, and the results of AOSD are compared with other MH methods. From the results, AOSD can reduce the number of features by preserving or increasing the classification accuracy better than other MH techniques.
Sprog:engelsk
Udgivet: 2021
Fag:
Online adgang:https://doi.org/10.3390/math9212786
Format: MixedMaterials Electronisk Book Chapter
KOHA link:https://koha.lib.tpu.ru/cgi-bin/koha/opac-detail.pl?biblionumber=666030

MARC

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200 1 |a Boosting Atomic Orbit Search Using Dynamic-Based Learning for Feature Selection  |f Mohamed Abd Elaziz, A. Laith, Yo. Dalia [et al.] 
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330 |a Feature selection (FS) is a well-known preprocess step in soft computing and machine learning algorithms. It plays a critical role in different real-world applications since it aims to determine the relevant features and remove other ones. This process (i.e., FS) reduces the time and space complexity of the learning technique used to handle the collected data. The feature selection methods based on metaheuristic (MH) techniques established their performance over all the conventional FS methods. So, in this paper, we presented a modified version of new MH techniques named Atomic Orbital Search (AOS) as FS technique. This is performed using the advances of dynamic opposite-based learning (DOL) strategy that is used to enhance the ability of AOS to explore the search domain. This is performed by increasing the diversity of the solutions during the searching process and updating the search domain. A set of eighteen datasets has been used to evaluate the efficiency of the developed FS approach, named AOSD, and the results of AOSD are compared with other MH methods. From the results, AOSD can reduce the number of features by preserving or increasing the classification accuracy better than other MH techniques. 
461 |t Mathematics 
463 |t Vol. 9, iss. 21  |v [2786, 17 p.]  |d 2021 
610 1 |a электронный ресурс 
610 1 |a труды учёных ТПУ 
610 1 |a soft computing 
610 1 |a machine learning 
610 1 |a feature selection (FS) 
610 1 |a metaheuristic (MH) 
610 1 |a atomic orbital search (AOS) 
610 1 |a dynamic opposite-based learning (DOL) 
610 1 |a вычисления 
610 1 |a машинное обучение 
610 1 |a метаэвристика 
610 1 |a атомно-орбитальные модели 
701 0 |a Mohamed Abd Elaziz 
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701 1 |a Dalia  |b Yo.  |g Yousri 
701 1 |a Oliva Navarro  |b D. A.  |c specialist in the field of informatics and computer technology  |c Professor of Tomsk Polytechnic University  |f 1983-  |g Diego Alberto  |3 (RuTPU)RU\TPU\pers\37366 
701 0 |a Mohammed A. A. Al-Qaness 
701 0 |a Mohammad H. Nadimi-Shahraki 
701 1 |a Ewees  |b A. A.  |g Ahmed 
701 1 |a Songfeng  |b L.  |g Lu 
701 1 |a Rehab  |b A. I.  |g Ali Ibrahim 
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