Convergence of the modified recurrent Perceptron learning rule in Cellular Neural Networks

Authors

  • Lê Anh Tú
  • Dương Đức Anh
  • Vũ Thị Tuyết Nhung
  • Nguyễn Quang Hoan

Keywords:

Cellular Neural Networks, convergence, Perceptron learning rule, recurrent neural networks, trial and error approach.

Abstract

The purpose of the paper is to prove the convergence of the modified Perceptron learning rule in order to apply to all recurrent neural networks in general and to Cellular Neural Networks (CNN) in particular. Cellular Neural Networks are characterized by the saturation function for the output activation function. Based on the saturation function, we define the relation between the Perceptron learning rule and the Least Mean Squares (LMS) algorithms in order to propose theorems and prove the convergence of the Perceptron learning rule. A number of case studies are presented in Lemma 1 and Lemma 2 of the paper. The article also presents a few experiments to verify the convergence of the algorithm by simulation.

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Author Biographies

  • Lê Anh Tú

    Trường Đại học Hạ Long

  • Dương Đức Anh

    Viện nghiên cứu Điện tử, Tin học, Tự động hóa

  • Vũ Thị Tuyết Nhung

    Trường Cao đẳng Công nghệ cao Hà Nội

  • Nguyễn Quang Hoan

    Học Viện Công nghệ Bưu chính Viễn Thông

Published

2024-03-20

Issue

Section

Bài viết