Journal of Information Science and Engineering>18卷2期
頁數:12 需求點數:48 電子全文: 請登入.
系統識別號167163
篇 名A Fast Winner-Take-All Neural Networks with the Dynamic Ratio
作 者陳奇銘(Chi-Ming Chen);徐明宏(Ming-Hung Hsu);王天佑(Tien-Yo Wang)
刊 名Journal of Information Science and Engineering
卷期/出版年月18卷2期 (2002/03)
頁次211-222
資料語文英文
摘要

In this paper, we propose a fast winner-take-all (WTA) neural network. The fast winner-take-all neural network with the dynamic ratio in mutual-inhibition is developed from the general mean-based neural network (GEMNET), which adopts the mean of the active neurons as the threshold of mutual inhibition. Furthermore, the other winner-take-all neural network enhances the convergence speed to become a decimal system. The proposed WTA neural networks statistically achieve the large ratio of mutual inhibition. The new WTA Neural Networks converge faster than the existing WTA neural networks for a large number of competitors based on both theoretical analyses and simulation results.

關鍵詞winner-take-all,neural network,convergence speed,decimal system,mutual inhibition
CEPS分類學科別>應用科學>資訊工程


華藝數位股份有限公司 版權所有 © 2003-2007 All Rights Reserved   最近更新日期:2010/09/03