van de Wouw Didrika S, McKay Ryan T, Furl Nicholas
Royal Holloway, University of London, Egham, UK.
Commun Psychol. 2024 Dec 18;2(1):119. doi: 10.1038/s44271-024-00172-8.
Considerable research has shown that people make biased decisions in "optimal stopping problems", where options are encountered sequentially, and there is no opportunity to recall rejected options or to know upcoming options in advance (e.g. when flat hunting or choosing a spouse). Here, we used computational modelling to identify the mechanisms that best explain decision bias in the context of an especially realistic version of this problem: the full-information problem. We eliminated a number of factors as potential instigators of bias. Then, we examined sequence length and payoff scheme: two manipulations where an optimality model recommends adjusting the sampling rate. Here, participants were more reluctant to increase their sampling rates when it was optimal to do so, leading to increased undersampling bias. Our comparison of several computational models of bias demonstrates that many participants maintain these relatively low sampling rates because of suboptimally pessimistic expectations about the quality of future options (i.e. a mis-specified prior distribution). These results support a new theory about how humans solve full information problems. Understanding the causes of decision error could enhance how we conduct real world sequential searches for options, for example how online shopping or dating applications present options to users.
大量研究表明,人们在“最优停止问题”中会做出有偏差的决策,在这类问题中,选项是依次出现的,没有机会召回已拒绝的选项或提前知晓即将出现的选项(例如找房子或选配偶时)。在此,我们运用计算模型来确定在该问题一个特别现实的版本——完全信息问题的背景下,最能解释决策偏差的机制。我们排除了一些作为偏差潜在诱因的因素。然后,我们考察了序列长度和收益方案:这是最优性模型建议调整采样率的两种操作。在此,当增加采样率是最优选择时,参与者更不愿意这样做,从而导致欠采样偏差增加。我们对几种偏差计算模型的比较表明,许多参与者维持这些相对较低的采样率是因为对未来选项质量的次优悲观预期(即先验分布指定错误)。这些结果支持了一种关于人类如何解决完全信息问题的新理论。理解决策错误的原因可以改进我们在现实世界中对选项进行序列搜索的方式,例如在线购物或约会应用程序向用户展示选项的方式。