Improved weight initialization for deep and narrow feedforward neural network.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

Appropriate weight initialization settings, along with the ReLU activation function, have become cornerstones of modern deep learning, enabling the training and deployment of highly effective and efficient neural network models across diverse areas of artificial intelligence. The problem of "dying ReLU," where ReLU neurons become inactive and yield zero output, presents a significant challenge in the training of deep neural networks with ReLU activation function. Theoretical research and various methods have been introduced to address the problem. However, even with these methods and research, training remains challenging for extremely deep and narrow feedforward networks with ReLU activation function. In this paper, we propose a novel weight initialization method to address this issue. We establish several properties of our initial weight matrix and demonstrate how these properties enable the effective propagation of signal vectors. Through a series of experiments and comparisons with existing methods, we demonstrate the effectiveness of the novel initialization method.

Authors

  • Hyunwoo Lee
    Department of Emotion Engineering, University of Sangmyung, Seoul 03016, Korea. lhw4846@naver.com.
  • Yunho Kim
    Department of Mathematical Sciences, UNIST, Ulsan 44919, Korea.
  • Seung Yeop Yang
    Department of Mathematics, Kyungpook National University, Daegu 41566, Republic of Korea; KNU LAMP Research Center, KNU Institute of Basic Sciences, Kyungpook National University, Daegu, 41566, Republic of Korea. Electronic address: seungyeop.yang@knu.ac.kr.
  • Hayoung Choi
    Department of Mathematics, Kyungpook National University, Daegu 41566, Republic of Korea. Electronic address: hayoung.choi@knu.ac.kr.