Barnden J A, Srinivas K
Dept. of Comput. Sci., New Mexico State Univ., Las Cruces, NM.
IEEE Trans Neural Netw. 1993;4(5):844-53. doi: 10.1109/72.248461.
Winner-take-all (WTA) networks frequently appear in neural network models. They are primarily used for decision making and selection. As an alternative to the conventional activation-based winner-take-all mechanisms (AWTA), we present a time-based temporal-winner-take-all mechanism with O(n) space complexity and roughly O(log n) time complexity. The mechanism exploits systematic and stochastic differences between time delays within different units and connections. The TWTA and the AWTA networks are shown to be logically equivalent, but the TWTA mechanism may be more suitable than the latter for various selection tasks, especially the selection of an arbitrary unit from a set (e.g., as in unit recruitment). TWTA avoids various problems with conventional WTA, notably the difficulty of making it converge rapidly over a large range of conditions. Here we report a probabilistic analysis of the TWTA mechanism along with experimental data obtained from numerous massively parallel simulations of the TWTA mechanism on the connection machine.
赢家通吃(WTA)网络在神经网络模型中经常出现。它们主要用于决策和选择。作为传统基于激活的赢家通吃机制(AWTA)的替代方案,我们提出了一种基于时间的时间赢家通吃机制,其空间复杂度为O(n),时间复杂度约为O(log n)。该机制利用了不同单元和连接之间时间延迟的系统差异和随机差异。结果表明,TWTA网络和AWTA网络在逻辑上是等效的,但对于各种选择任务,尤其是从一组中选择任意单元(例如在单元招募中),TWTA机制可能比后者更合适。TWTA避免了传统WTA的各种问题,特别是在大范围条件下使其快速收敛的困难。在这里,我们报告了对TWTA机制的概率分析以及从连接机上对TWTA机制进行的大量并行模拟中获得的实验数据。