随机选择与认知努力的分配

Stochastic Choice and the Allocation of Cognitive Effort

Experimental Economics · 2005
被引 91
人大 A-ABS 3

中文导读

利用风险选择实验数据估计随机选择模型,发现被试在接近无差异的问题上投入更多认知努力,为实验设计提供新依据。

Abstract

Abstract Data from a risky choice experiment are used to estimate a fully parametric stochastic model of risky choice. As is usual with such analyses, Expected Utility Theory is rejected in favour of a form of Rank Dependent Theory. Then an estimate of the risk aversion parameter is deduced for each subject, and this is used to construct a measure of the “closeness to indifference” of each subject in each choice problem. This measure is then used as an explanatory variable in a random effects model of decision time, with other explanatory variables being the complexity of the problem, the financial incentives, and the amount of experience accumulated at the time of performing the task. The most interesting finding is that significantly more effort is allocated to problems in which subjects are close to indifference. This presents us with another reason (in addition to statistical information considerations) why such tasks should play a prominent role in experiments.

随机选择认知努力分配风险决策实验接近无差异