A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines

Yıl: 2019 Cilt: 27 Sayı: 2 Sayfa Aralığı: 1523 - 1533 Metin Dili: İngilizce DOI: 10.3906/elk-1802-40 İndeks Tarihi: 15-05-2020

A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines

Öz:
Data classification is the process of organizing data by relevant categories. In this way, the data can beunderstood and used more efficiently by scientists. Numerous studies have been proposed in the literature for the problem of data classification. However, with recently introduced metaheuristics, it has continued to be riveting to revisit this classical problem and investigate the efficiency of new techniques. Teaching-learning-based optimization (TLBO) is a recent metaheuristic that has been reported to be very effective for combinatorial optimization problems. In this study, we propose a novel hybrid TLBO algorithm with extreme learning machines (ELM) for the solution of data classification problems. The proposed algorithm (TLBO-ELM) is tested on a set of UCI benchmark datasets. The performance of TLBO-ELM is observed to be competitive for both binary and multiclass data classification problems compared with state-of-the-art algorithms.
Anahtar Kelime:

Konular: Mühendislik, Elektrik ve Elektronik Bilgisayar Bilimleri, Yazılım Mühendisliği Bilgisayar Bilimleri, Sibernitik Bilgisayar Bilimleri, Bilgi Sistemleri Bilgisayar Bilimleri, Donanım ve Mimari Bilgisayar Bilimleri, Teori ve Metotlar Bilgisayar Bilimleri, Yapay Zeka
Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA Sevinc E, DÖKEROĞLU T (2019). A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines. , 1523 - 1533. 10.3906/elk-1802-40
Chicago Sevinc Ender,DÖKEROĞLU TANSEL A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines. (2019): 1523 - 1533. 10.3906/elk-1802-40
MLA Sevinc Ender,DÖKEROĞLU TANSEL A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines. , 2019, ss.1523 - 1533. 10.3906/elk-1802-40
AMA Sevinc E,DÖKEROĞLU T A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines. . 2019; 1523 - 1533. 10.3906/elk-1802-40
Vancouver Sevinc E,DÖKEROĞLU T A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines. . 2019; 1523 - 1533. 10.3906/elk-1802-40
IEEE Sevinc E,DÖKEROĞLU T "A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines." , ss.1523 - 1533, 2019. 10.3906/elk-1802-40
ISNAD Sevinc, Ender - DÖKEROĞLU, TANSEL. "A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines". (2019), 1523-1533. https://doi.org/10.3906/elk-1802-40
APA Sevinc E, DÖKEROĞLU T (2019). A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines. Turkish Journal of Electrical Engineering and Computer Sciences, 27(2), 1523 - 1533. 10.3906/elk-1802-40
Chicago Sevinc Ender,DÖKEROĞLU TANSEL A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines. Turkish Journal of Electrical Engineering and Computer Sciences 27, no.2 (2019): 1523 - 1533. 10.3906/elk-1802-40
MLA Sevinc Ender,DÖKEROĞLU TANSEL A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines. Turkish Journal of Electrical Engineering and Computer Sciences, vol.27, no.2, 2019, ss.1523 - 1533. 10.3906/elk-1802-40
AMA Sevinc E,DÖKEROĞLU T A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines. Turkish Journal of Electrical Engineering and Computer Sciences. 2019; 27(2): 1523 - 1533. 10.3906/elk-1802-40
Vancouver Sevinc E,DÖKEROĞLU T A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines. Turkish Journal of Electrical Engineering and Computer Sciences. 2019; 27(2): 1523 - 1533. 10.3906/elk-1802-40
IEEE Sevinc E,DÖKEROĞLU T "A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines." Turkish Journal of Electrical Engineering and Computer Sciences, 27, ss.1523 - 1533, 2019. 10.3906/elk-1802-40
ISNAD Sevinc, Ender - DÖKEROĞLU, TANSEL. "A novel hybrid teaching-learning-based optimization algorithm for the classification of data by using extreme learning machines". Turkish Journal of Electrical Engineering and Computer Sciences 27/2 (2019), 1523-1533. https://doi.org/10.3906/elk-1802-40