计算机科学
数学优化
最优决策
数学
机器学习
决策树
作者
Rafał Bogacz,Eric Brown,Jeff Moehlis,Philip Holmes,Jonathan D. Cohen
出处
期刊:Psychological Review
[American Psychological Association]
日期:2006-01-01
卷期号:113 (4): 700-765
被引量:1629
标识
DOI:10.1037/0033-295x.113.4.700
摘要
In this article, the authors consider optimal decision making in two-alternative forced-choice (TAFC) tasks. They begin by analyzing 6 models of TAFC decision making and show that all but one can be reduced to the drift diffusion model, implementing the statistically optimal algorithm (most accurate for a given speed or fastest for a given accuracy). They prove further that there is always an optimal trade-off between speed and accuracy that maximizes various reward functions, including reward rate (percentage of correct responses per unit time), as well as several other objective functions, including ones weighted for accuracy. They use these findings to address empirical data and make novel predictions about performance under optimality.
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