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如何评估人们的估计能力:评估近似数系统中个体差异的测量方法。

How to estimate how well people estimate: evaluating measures of individual differences in the approximate number system.

作者信息

Chesney Dana, Bjalkebring Par, Peters Ellen

机构信息

Department of Psychology, The Ohio State University, 1827 Neil Avenue, Columbus, OH, 43210, USA.

Department of Psychology, University of Gothenburg, Gothenburg, Sweden.

出版信息

Atten Percept Psychophys. 2015 Nov;77(8):2781-802. doi: 10.3758/s13414-015-0974-6.

Abstract

At a glance, one can tell that there are more individual fruits in a pile of 100 apples than in a pile of 20 watermelons, even though the watermelons take up more space. People's ability to distinguish between such nonsymbolic numerical magnitudes without counting is derived from the approximate number system (ANS). Individual differences in this ability (ANS acuity) are emerging as an important predictor in research areas ranging from children's understanding of arithmetic to adults' use of numbers in judgment and decision making. However, ANS acuity must be assessed through proxy tasks that might not show consistent relationships with this ability. Furthermore, practical limitations often confine researchers to using abbreviated measures of this ability, whose reliability is questionable. Here, we developed and tested several novel ANS acuity measures: a nonsymbolic discrimination task designed to account for participants' lapses in attention; three estimation tasks, including one task in which participants estimated the number of dots in a briefly presented set, one in which they estimated the ratio between two sets of dots, and one in which they indicated the correct position of a set of dots on a "number-line" anchored by two sets of dots, as well as a similar number-line task using symbolic numbers. The results indicated that the discrimination task designed to account for lapses in participants' attention holds promise as a reliable measure of ANS acuity, considered in terms of both internal and test-retest reliability. We urge researchers to use acuity measures whose reliability has been demonstrated.

摘要

一眼就能看出,100个苹果堆中的单个水果比20个西瓜堆中的多,尽管西瓜占的空间更大。人们无需计数就能区分这种非符号化数字大小的能力源自近似数字系统(ANS)。这种能力(ANS敏锐度)的个体差异正成为从儿童对算术的理解到成年人在判断和决策中使用数字等研究领域的一个重要预测指标。然而,ANS敏锐度必须通过代理任务来评估,而这些任务可能与该能力没有一致的关系。此外,实际限制常常使研究人员只能使用该能力的简化测量方法,其可靠性存疑。在此,我们开发并测试了几种新颖的ANS敏锐度测量方法:一个旨在考虑参与者注意力不集中情况的非符号化辨别任务;三个估计任务,包括一个任务,参与者要估计短暂呈现的一组点的数量,一个任务是他们估计两组点之间的比例,还有一个任务是他们要指出一组点在由两组点锚定的“数字线”上的正确位置,以及一个使用符号数字的类似数字线任务。结果表明,旨在考虑参与者注意力不集中情况的辨别任务有望成为一种可靠的ANS敏锐度测量方法,无论是从内部可靠性还是重测可靠性来看。我们敦促研究人员使用已证明可靠性的敏锐度测量方法。

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