Erev Ido, Marx Ailie
Faculty of Data and Decisions Sciences, Technion Israel Institute of Technology, Haifa, Israel.
Department of Computer Science, Technion Israel Institute of Technology, Haifa, Israel.
Front Psychol. 2023 Jan 12;13:1041737. doi: 10.3389/fpsyg.2022.1041737. eCollection 2022.
Mainstream decision research rests on two implicit working assumptions, inspired by subjective expected utility theory. The first assumes that the underlying processes can be separated into judgment and decision-making stages without affecting their outcomes. The second assumes that in properly run experiments, the presentation of a complete description of the incentive structure replaces the judgment stage (and eliminates the impact of past experiences that can only affect judgment). While these working assumptions seem reasonable and harmless, the current paper suggests that they impair the derivation of useful predictions. The negative effect of the separation assumption is clarified by the predicted impact of rare events. Studies that separate judgment from decision making document oversensitivity to rare events, but without the separation people exhibit the opposite bias. The negative effects of the assumed impact of description include masking the large and predictable effect of past experiences on the way people use descriptions. We propose that the cognitive processes that underlie decision making are more similar to machine learning classification algorithms than to a two-stage probability judgment and utility weighting process. Our analysis suggests that clear insights can be obtained even when the number of feasible classes is very large, and the effort to list the rules that best describe behavior in each class is of limited value.
主流决策研究基于受主观预期效用理论启发的两个隐含工作假设。第一个假设是,潜在过程可以分为判断和决策阶段,而不会影响其结果。第二个假设是,在正确进行的实验中,对激励结构的完整描述的呈现取代了判断阶段(并消除了只能影响判断的过去经验的影响)。虽然这些工作假设似乎合理且无害,但本文表明它们会损害有用预测的推导。分离假设的负面影响通过罕见事件的预测影响得以阐明。将判断与决策分开的研究记录了对罕见事件的过度敏感,但没有分离时人们则表现出相反的偏差。假设描述的影响所产生的负面影响包括掩盖过去经验对人们使用描述方式的巨大且可预测的影响。我们提出,决策背后的认知过程更类似于机器学习分类算法,而不是两阶段概率判断和效用加权过程。我们的分析表明,即使可行类别数量非常大,也能获得清晰的见解,而且列出最能描述每个类别中行为的规则的努力价值有限。