Desmond J E, Moore J W
Department of Psychology, University of Massachusetts, Amherst 01003.
Biol Cybern. 1988;58(6):405-15. doi: 10.1007/BF00361347.
A conditioned response not only reflects knowledge of an association between two events, a CS and a US, it also reflects knowledge about the timing of these events. A neural network and set of learning rules that generates appropriately timed conditioned response waveforms is presented. The model is capable of simulating some of the basic temporal properties of conditioned responses exhibited in biological systems, including (1) decreasing onset latency during acquisition training, (2) peak amplitude occurring at the temporal locus of the US, (3) inhibition of delay, and (4) trace conditioning. The model is also capable of simulating complex CR waveforms under certain conditions, and these simulations are compared with the results of behavioral experiments. The temporally adaptive responses are achieved by virtue of stimulus trace processes that are built into the network architecture.
条件反应不仅反映了对两个事件(条件刺激和非条件刺激)之间关联的认知,还反映了对这些事件发生时间的认知。本文提出了一种神经网络和一组学习规则,它们能生成具有适当时间的条件反应波形。该模型能够模拟生物系统中表现出的一些条件反应的基本时间特性,包括:(1)在习得训练期间起始潜伏期缩短;(2)峰值幅度出现在非条件刺激的时间位点;(3)延迟抑制;以及(4)痕迹条件作用。该模型还能够在某些条件下模拟复杂的条件反应波形,并将这些模拟结果与行为实验结果进行比较。通过内置在网络架构中的刺激痕迹过程实现了时间上的适应性反应。