表达:分布统计学习中的个体差异:更好的频率 "判别者 "是更好的 "估计者"。

IF 1.5 3区 心理学 Q4 PHYSIOLOGY
Bethany Growns, Kristy A Martire, Erwin J A T Mattijssen
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引用次数: 0

摘要

人们可以轻松地从环境中提取和编码统计信息。然而,研究主要集中在条件统计学习(即学习刺激之间的联合和条件关系的能力),而在很大程度上忽视了分布统计学习(即学习分布的频率和变异性的能力)。例如,学习 "E "在英语字母表中比 "Z "更常见。在本文中,我们通过探索四种不同的分布学习测量方法(从辨别相对频率的能力到估计频率的能力)之间的关系和心理测量特性,研究了如何测量分布学习。我们确定了四种分布学习测量之间的适度关系,这些任务占了不同任务成绩差异的很大一部分(44.3%)。分歧有效性测量(内在动机)与任何统计学习测量之间都没有显著的相关性,并且在不同任务的差异中占单独的一部分。更复杂的测量也显示出更好的可靠性和内部一致性。我们的研究结果表明,分布统计学习既包括区分相对频率的能力,也包括直接估计相对频率的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Individual differences in distributional statistical learning: Better frequency "discriminators" are better "estimators".

People can easily extract and encode statistical information from their environment. However, research has primarily focused on conditional statistical learning (i.e., the ability to learn joint and conditional relationships between stimuli) and has largely neglected distributional statistical learning (i.e., the ability to learn the frequency and variability of distributions). For example, learning that "E" is more common in the English alphabet than "Z." In this article, we investigate how distributional learning can be measured by exploring the relationship between, and psychometric properties of, four different measures of distributional learning-from the ability to discriminate relative frequencies to the ability to estimate frequencies. We identified moderate relationships between four distributional learning measures and these tasks accounted for a substantial portion of the variance in performance across tasks (44.3%). A measure of divergent validity (intrinsic motivation) did not significantly correlate with any statistical learning measure and accounted for a separate portion of the variance across tasks. Our results suggest that distributional statistical learning encompasses the ability to discriminate between relative frequencies and estimating them.

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来源期刊
CiteScore
3.50
自引率
5.90%
发文量
178
审稿时长
3-8 weeks
期刊介绍: Promoting the interests of scientific psychology and its researchers, QJEP, the journal of the Experimental Psychology Society, is a leading journal with a long-standing tradition of publishing cutting-edge research. Several articles have become classic papers in the fields of attention, perception, learning, memory, language, and reasoning. The journal publishes original articles on any topic within the field of experimental psychology (including comparative research). These include substantial experimental reports, review papers, rapid communications (reporting novel techniques or ground breaking results), comments (on articles previously published in QJEP or on issues of general interest to experimental psychologists), and book reviews. Experimental results are welcomed from all relevant techniques, including behavioural testing, brain imaging and computational modelling. QJEP offers a competitive publication time-scale. Accepted Rapid Communications have priority in the publication cycle and usually appear in print within three months. We aim to publish all accepted (but uncorrected) articles online within seven days. Our Latest Articles page offers immediate publication of articles upon reaching their final form. The journal offers an open access option called Open Select, enabling authors to meet funder requirements to make their article free to read online for all in perpetuity. Authors also benefit from a broad and diverse subscription base that delivers the journal contents to a world-wide readership. Together these features ensure that the journal offers authors the opportunity to raise the visibility of their work to a global audience.
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