Fang Yuguang, Cohen Michael A, Kincaid Thomas G
Department of Electrical and Computer Engineering, University of Florida, Gainesville, FL 32611-6130, USA.
IEEE Trans Neural Netw. 2010 May;21(5):771-83. doi: 10.1109/TNN.2010.2041671. Epub 2010 Mar 8.
This paper studies a general class of dynamical neural networks with lateral inhibition, exhibiting winner-take-all (WTA) behavior. These networks are motivated by a metal-oxide-semiconductor field effect transistor (MOSFET) implementation of neural networks, in which mutual competition plays a very important role. We show that for a fairly general class of competitive neural networks, WTA behavior exists. Sufficient conditions for the network to have a WTA equilibrium are obtained, and rigorous convergence analysis is carried out. The conditions for the network to have the WTA behavior obtained in this paper provide design guidelines for the network implementation and fabrication. We also demonstrate that whenever the network gets into the WTA region, it will stay in that region and settle down exponentially fast to the WTA point. This provides a speeding procedure for the decision making: as soon as it gets into the region, the winner can be declared. Finally, we show that this WTA neural network has a self-resetting property, and a resetting principle is proposed.
本文研究了一类具有侧向抑制的通用动态神经网络,这类网络表现出胜者全得(WTA)行为。这些网络的灵感来源于神经网络的金属氧化物半导体场效应晶体管(MOSFET)实现方式,其中相互竞争起着非常重要的作用。我们表明,对于一类相当通用的竞争神经网络,存在WTA行为。获得了网络具有WTA平衡点的充分条件,并进行了严格的收敛性分析。本文得到的网络具有WTA行为的条件为网络实现和制造提供了设计指导。我们还证明,只要网络进入WTA区域,它就会停留在该区域并以指数速度快速收敛到WTA点。这为决策提供了一个加速过程:一旦进入该区域,就可以宣布胜者。最后,我们表明这种WTA神经网络具有自复位特性,并提出了一种复位原理。