Heath R A
Department of Psychology, University of Newcastle NSW, Australia.
Psychol Res. 2000;63(2):183-91. doi: 10.1007/pl00008177.
The Ornstein-Uhlenbeck (OU) model for human decision-making has been successfully applied to account for response accuracy and response time (RT) data in recent two-choice decision models. A variant of the OU model is shown to arise from the response dynamics of a nonlinear network consisting of randomly connected neural processing units. When feedback control of the network is effected by the stimulus onset, the average network response is an autocorrelated random signal satisfying the stochastic differential equation for the OU process. An alternative, more general, stimulus detection procedure is proposed which involves the use of an adaptive Kalman filter process to track any temporal change in autoregressive parameters. The predicted decision time distributions suggest that both the OU and the Kalman filter processes can serve as alternative models for RT data in experimental tasks.
用于人类决策的奥恩斯坦-乌伦贝克(OU)模型已成功应用于解释最近的二选一决策模型中的反应准确性和反应时间(RT)数据。OU模型的一个变体源于由随机连接的神经处理单元组成的非线性网络的反应动力学。当网络的反馈控制由刺激开始时,平均网络反应是一个自相关随机信号,满足OU过程的随机微分方程。提出了一种替代的、更通用的刺激检测程序,该程序涉及使用自适应卡尔曼滤波过程来跟踪自回归参数的任何时间变化。预测的决策时间分布表明,OU和卡尔曼滤波过程都可以作为实验任务中RT数据的替代模型。