统计学习中的个体差异:概念和测量问题

Collabra Pub Date : 2016-10-27 DOI:10.1525/COLLABRA.41
L. Erickson, Michael P. Kaschak, Erik D. Thiessen, C. Berry
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引用次数: 29

摘要

适应统计结构的能力(通常被称为“统计学习”)被认为在自然语言的习得和使用中起着重要作用。最近的几项研究探讨了统计学习的个体差异与语言成绩之间的关系。这些研究产生了不同的结果,一些研究发现统计学习和语言成绩之间存在显著的关系,而另一些研究发现微弱或无效的结果。此外,少数使用多种统计学习方法的研究报告称,它们并不相关(例如,[1])。目前的研究评估了听觉统计分割的各种措施的可靠性,以及它们随时间的一致性。也就是说,统计学习测量之间普遍存在的低相关性是源于任务要求、测量的心理测量特性,还是统计学习可能是一个高度碎片化的结构?我们的研究结果证实了先前的报告,即统计学习的个体测量往往彼此不相关,并表明测量的可靠性有些弱可能是低相关性的重要因素。我们的数据还表明,跨任务的聚合性能可能是提高测量可靠性的途径。
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 Statistical Learning: Conceptual and Measurement Issues
The ability to adapt to statistical structure (often referred to as “statistical learning”) has been proposed to play a major role in the acquisition and use of natural languages. Several recent studies have explored the relationship between individual differences in statistical learning and language outcomes. These studies have produced mixed results, with some studies finding a significant relationship between statistical learning and language outcomes, and others finding weak or null results. Furthermore, the few studies that have used multiple measures of statistical learning have reported that they are not correlated (e.g., [1]). The current study assesses the reliability of various measures of auditory statistical segmentation, and their consistency over time. That is, do the generally low correlations observed between measures of statistical learning stem from task demands, the psychometric properties of the measures, or the fact that statistical learning may be a highly fragmented construct? Our results confirm previous reports that individual measures of statistical learning tend not to correlate with each other, and suggest that the somewhat weak reliability of the measures may be an important factor in the low correlations. Our data also suggest that aggregating performance across tasks may be an avenue for improving the reliability of the measures.
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