Bohil Corey J, Maddox W Todd
University of Texas, Austin, Texas 78712, USA.
Mem Cognit. 2003 Mar;31(2):181-98. doi: 10.3758/bf03194378.
Biased category payoff matrices engender separate reward- and accuracy-maximizing decision criteria Although instructed to maximize reward, observers use suboptimal decision criteria that place greater emphasis on accuracy than is optimal. In this study, objective classifier feedback (the objectively correct response) was compared with optimal classifier feedback (the optimal classifier's response) at two levels of category discriminability when zero or negative costs accompanied incorrect responses for two payoff matrix multiplication factors. Performance was superior for optimal classifier feedback relative to objective classifier feedback for both zero- and negative-cost conditions, especially when category discriminability was low, but the magnitude of the optimal classifier advantage was approximately equal for zero- and negative-cost conditions. The optimal classifier feedback performance advantage did not interact with the payoff matrix multiplication factor. Model-based analyses suggested that the weight placed on accuracy was reduced for optimal classifier feedback relative to objective classifier feedback and for high category discriminability relative to low category discriminability. In addition, the weight placed on accuracy declined with training when feedback was based on the optimal classifier and remained relatively stable when feedback was based on the objective classifier. These results suggest that feedback based on the optimal classifier leads to superior decision criterion learning across a wide range of experimental conditions.
有偏差的类别收益矩阵产生了分别使奖励最大化和准确性最大化的决策标准 尽管被指示要使奖励最大化,但观察者使用的是次优决策标准,该标准对准确性的重视程度高于最优水平。在本研究中,当针对两个收益矩阵乘法因子,错误反应伴随着零成本或负成本时,在两个类别可辨别性水平上,将客观分类器反馈(客观正确反应)与最优分类器反馈(最优分类器的反应)进行了比较。在零成本和负成本条件下,最优分类器反馈的表现均优于客观分类器反馈,尤其是在类别可辨别性较低时,但最优分类器优势的大小在零成本和负成本条件下大致相等。最优分类器反馈的表现优势与收益矩阵乘法因子没有相互作用。基于模型的分析表明,相对于客观分类器反馈以及相对于低类别可辨别性而言的高类别可辨别性,最优分类器反馈对准确性的权重降低。此外,当反馈基于最优分类器时,对准确性的权重会随着训练而下降,而当反馈基于客观分类器时,该权重则保持相对稳定。这些结果表明,基于最优分类器的反馈在广泛的实验条件下能带来更好的决策标准学习。