Bohil C J, Maddox W T
Department of Psychology, Mezes Hall 330, University of Texas, Austin, TX 78712, USA.
Percept Psychophys. 2001 Feb;63(2):361-76. doi: 10.3758/bf03194476.
The optimality of perceptual categorization performance under manipulations of category discriminability (i.e., d' level), base rates, and payoffs was examined. Base-rate and payoff manipulations across two category discriminabilities allowed a test of the hypothesis that the steepness of the objective reward function affects performance (i.e., the flat-maxima hypothesis), as well as the hypothesis that observers combine base-rate and payoff information independently. Performance was (1) closer to optimal for the steeper objective reward function, in line with the flat-maxima hypothesis, (2) closer to optimal in base-rate conditions than in payoff conditions, and (3) in partial support of the hypothesis that base-rate and payoff knowledge is combined independently. Implications for current theories of base-rate and payoff learning are discussed.
研究了在类别可辨别性(即d'水平)、基础概率和收益的操纵下,知觉分类表现的最优性。在两种类别可辨别性条件下对基础概率和收益进行操纵,从而能够检验如下假设:客观奖励函数的陡峭程度会影响表现(即扁平最大值假设),以及观察者独立结合基础概率和收益信息的假设。表现为:(1)对于更陡峭的客观奖励函数,表现更接近最优,这与扁平最大值假设一致;(2)在基础概率条件下比在收益条件下更接近最优;(3)部分支持基础概率和收益知识是独立结合的这一假设。讨论了对当前基础概率和收益学习理论的启示。