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概率判断和信念修正的相似性更新模型。

The similarity-updating model of probability judgment and belief revision.

机构信息

Department of Psychology.

出版信息

Psychol Rev. 2021 Nov;128(6):1088-1111. doi: 10.1037/rev0000299. Epub 2021 Jul 22.

Abstract

People often take nondiagnostic information into account when revising their beliefs. A probability judgment decreases due to nondiagnostic information represents the well-established "dilution effect" observed in many domains. Surprisingly, the opposite of the dilution effect called the "confirmation effect" has also been observed frequently. The present work provides a unified cognitive model that allows both effects to be explained simultaneously. The suggested similarity-updating model incorporates two psychological components: first, a similarity-based judgment inspired by categorization research, and second, a weighting-and-adding process with an adjustment following a similarity-based confirmation mechanism. Four experimental studies demonstrate the model's predictive accuracy for probability judgments and belief revision. The participants received a sample of information from one of two options and had to judge from which option the information came. The similarity-updating model predicts that the probability judgment is a function of the similarity of the sample to the options. When one is presented with a new sample, the previous probability judgment is updated with a second probability judgment by taking a weighted average of the two and adjusting the result according to a similarity-based confirmation. The model describes people's probability judgments well and outcompetes a Bayesian cognitive model and an alternative probability-theory-plus-noise model. The similarity-updating model accounts for several qualitative findings, namely, dilution effects, confirmation effects, order effects, and the finding that probability judgments are invariant to sample size. In sum, the similarity-updating model provides a plausible account of human probability judgment and belief revision. (PsycInfo Database Record (c) 2021 APA, all rights reserved).

摘要

人们在修正自己的信念时经常会考虑到非诊断信息。由于非诊断信息导致的概率判断降低,代表了在许多领域中观察到的成熟的“稀释效应”。令人惊讶的是,被称为“确认效应”的稀释效应的相反情况也经常被观察到。本研究提供了一个统一的认知模型,该模型可以同时解释这两种效应。建议的相似性更新模型包含两个心理成分:首先,基于分类研究的相似性判断,其次,在基于相似性的确认机制之后进行加权和添加的过程。四项实验研究表明,该模型对概率判断和信念修正的预测准确性。参与者从两个选项中的一个中接收了样本信息,并必须判断信息来自哪个选项。相似性更新模型预测,概率判断是样本与选项之间相似性的函数。当呈现新的样本时,通过对两个样本进行加权平均,并根据基于相似性的确认进行调整,用第二个概率判断来更新先前的概率判断。该模型很好地描述了人们的概率判断,并优于贝叶斯认知模型和替代的概率理论加噪声模型。相似性更新模型解释了几个定性发现,即稀释效应、确认效应、顺序效应,以及概率判断与样本大小无关的发现。总之,相似性更新模型为人类概率判断和信念修正提供了一个合理的解释。

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