A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network

Yıl: 2019 Cilt: 27 Sayı: 6 Sayfa Aralığı: 4246 - 4255 Metin Dili: İngilizce DOI: 10.3906/elk-1903-75 İndeks Tarihi: 22-05-2020

A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network

Öz:
The random vector functional link (RVFL) has successfully been employed in many applications since 1989.RVFL has a single hidden layer feedforward structure that also has direct links between the input layer and the outputlayer. Although nonlinearity, high generalization capacity, and fast training ability can be provided in RVFL, it can befound from the literature that higher nonlinearity can be obtained by adding recurrent feedback to an artificial neuralnetwork. In this paper, the recurrent type of RVFL (R-RVFL), which has both outer feedbacks and also inner feedbacks,is proposed. In order to evaluate and validate the proposed approach, a total of 109 public datasets were employed.Obtained results showed that R-RVFL can be employed successfully in terms of obtained success rates.
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 Ertuğrul Ö (2019). A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network. , 4246 - 4255. 10.3906/elk-1903-75
Chicago Ertuğrul Ömer Faruk A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network. (2019): 4246 - 4255. 10.3906/elk-1903-75
MLA Ertuğrul Ömer Faruk A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network. , 2019, ss.4246 - 4255. 10.3906/elk-1903-75
AMA Ertuğrul Ö A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network. . 2019; 4246 - 4255. 10.3906/elk-1903-75
Vancouver Ertuğrul Ö A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network. . 2019; 4246 - 4255. 10.3906/elk-1903-75
IEEE Ertuğrul Ö "A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network." , ss.4246 - 4255, 2019. 10.3906/elk-1903-75
ISNAD Ertuğrul, Ömer Faruk. "A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network". (2019), 4246-4255. https://doi.org/10.3906/elk-1903-75
APA Ertuğrul Ö (2019). A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network. Turkish Journal of Electrical Engineering and Computer Sciences, 27(6), 4246 - 4255. 10.3906/elk-1903-75
Chicago Ertuğrul Ömer Faruk A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network. Turkish Journal of Electrical Engineering and Computer Sciences 27, no.6 (2019): 4246 - 4255. 10.3906/elk-1903-75
MLA Ertuğrul Ömer Faruk A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network. Turkish Journal of Electrical Engineering and Computer Sciences, vol.27, no.6, 2019, ss.4246 - 4255. 10.3906/elk-1903-75
AMA Ertuğrul Ö A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network. Turkish Journal of Electrical Engineering and Computer Sciences. 2019; 27(6): 4246 - 4255. 10.3906/elk-1903-75
Vancouver Ertuğrul Ö A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network. Turkish Journal of Electrical Engineering and Computer Sciences. 2019; 27(6): 4246 - 4255. 10.3906/elk-1903-75
IEEE Ertuğrul Ö "A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network." Turkish Journal of Electrical Engineering and Computer Sciences, 27, ss.4246 - 4255, 2019. 10.3906/elk-1903-75
ISNAD Ertuğrul, Ömer Faruk. "A novel randomized recurrent artificial neural network approach: recurrent random vector functional link network". Turkish Journal of Electrical Engineering and Computer Sciences 27/6 (2019), 4246-4255. https://doi.org/10.3906/elk-1903-75