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时间假设如何影响因果判断。

How temporal assumptions influence causal judgments.

作者信息

Hagmayer York, Waldmann Michael R

机构信息

Department of Psychology, University of Göttingen, Göttingen, Germany.

出版信息

Mem Cognit. 2002 Oct;30(7):1128-37. doi: 10.3758/bf03194330.

Abstract

Causal learning typically entails the problem of being confronted with a large number of potentially relevant statistical relations. One type of constraint that may guide the choice of appropriate statistical indicators of causality are assumptions about temporal delays between causes and effects. There have been a few previous studies in which the role of temporal relations in the learning of events that are experienced in real time have been investigated. However, human causal reasoning may also be based on verbally described events, rather than on direct experiences of the events to which the descriptions refer. The aim of this paper is to investigate whether assumptions about the temporal characteristics of the events that are being described also affect causal judgment. Three experiments are presented that demonstrate that different temporal assumptions about causal delays may lead to dramatically different causal judgments, despite identical leaning inputs. In particular, the experiments show that temporal assumptions guide the choice of appropriate statistical indicators of causality by structuring the event stream (Experiment 1), by selecting the potential causes among a set of competing candidates (Experiment 2), and by influencing the level of aggregation of events (Experiment 3).

摘要

因果学习通常会面临大量潜在相关统计关系的问题。一种可能指导选择合适因果统计指标的约束类型是关于因果之间时间延迟的假设。之前有一些研究调查了时间关系在实时经历的事件学习中的作用。然而,人类的因果推理也可能基于口头描述的事件,而非基于描述所涉及事件的直接体验。本文的目的是研究关于所描述事件时间特征的假设是否也会影响因果判断。文中呈现了三个实验,这些实验表明,尽管学习输入相同,但关于因果延迟的不同时间假设可能导致截然不同的因果判断。具体而言,实验表明时间假设通过构建事件流(实验1)、在一组相互竞争的候选因素中选择潜在原因(实验2)以及影响事件的聚合水平(实验3)来指导选择合适的因果统计指标。

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