Department of Psychology, University of Mannheim.
Department of Psychology, University of Portsmouth.
J Exp Psychol Gen. 2023 Nov;152(11):3167-3188. doi: 10.1037/xge0001452. Epub 2023 Aug 3.
When people estimate the quantities of objects (e.g., country populations), are then presented with the objects' actual quantities, and subsequently asked to remember their initial estimates, responses are often distorted towards the actual quantities. This -traditionally considered to reflect a cognitive error-has more recently been proposed to result from adaptive knowledge updating. But how to conceptualize such knowledge-updating processes and their potentially beneficial consequences? Here, we provide a framework that conceptualizes knowledge updating in the context of hindsight bias in real-world estimation by connecting it with research on -improvements in people's estimation accuracy after exposure to numerical facts. This integrative perspective highlights a previously neglected facet of knowledge updating, namely, recalibration of metric domain knowledge, which can be expected to lead to transfer learning and thus improve estimation for objects from a domain more generally. We develop an experimental paradigm to investigate the association of hindsight bias with improved estimation accuracy. In Experiment 1, we demonstrate that the classical approach to induce hindsight bias indeed produces transfer learning. In Experiment 2, we provide evidence for the novel prediction that hindsight bias can be triggered via transfer learning; this establishes a direct link from knowledge updating to hindsight bias. Our work integrates two prominent but previously unconnected research programs on the effects of knowledge updating in real-world estimation and supports the notion that hindsight bias is driven by adaptive learning processes. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
当人们估计物体的数量(例如,国家人口)时,会被呈现出物体的实际数量,然后被要求记住他们最初的估计,他们的反应往往会朝着实际数量扭曲。这种-传统上被认为反映了认知错误-最近被提议是由于适应性知识更新的结果。但是,如何概念化这种知识更新过程及其潜在的有益后果呢?在这里,我们提供了一个框架,通过将其与关于人们在接触数字事实后提高估计准确性的研究联系起来,来概念化后见之明偏差背景下的知识更新。这种综合观点突出了知识更新的一个以前被忽视的方面,即度量域知识的重新校准,这可以预期会导致转移学习,从而提高对更一般领域的对象的估计。我们开发了一个实验范式来研究后见之明偏差与改进的估计准确性之间的关联。在实验 1 中,我们证明了诱导后见之明偏差的经典方法确实产生了转移学习。在实验 2 中,我们提供了证据支持一个新的预测,即后见之明偏差可以通过转移学习触发;这从知识更新到后见之明偏差建立了直接联系。我们的工作整合了两个在现实世界估计中知识更新效果的突出但以前未连接的研究计划,并支持了这样一种观点,即后见之明偏差是由适应性学习过程驱动的。(PsycInfo 数据库记录(c)2024 APA,保留所有权利)。