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Splitting the variance of statistical learning performance: A parametric investigation of exposure duration and transitional probabilities

机译:拆分统计学习成绩的方差:暴露时间和过渡概率的参数研究

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摘要

What determines individuals’ efficacy in detecting regularities in visual statistical learning? Our theoretical starting point assumes that the variance in performance of statistical learning (SL) can be split into the variance related to efficiency in encoding representations within a modality and the variance related to the relative computational efficiency of detecting the distributional properties of the encoded representations. Using a novel methodology, we dissociated encoding from higher-order learning factors, by independently manipulating exposure duration and transitional probabilities in a stream of visual shapes. Our results show that the encoding of shapes and the retrieving of their transitional probabilities are not independent and additive processes, but interact to jointly determine SL performance. The theoretical implications of these findings for a mechanistic explanation of SL are discussed.
机译:是什么决定了个人在视觉统计学习中发现规律的功效?我们的理论起点假设,可以将统计学习(SL)的性能差异分为与模态内编码表示效率有关的差异和与检测编码表示的分布特性的相对计算效率有关的差异。通过使用新颖的方法,我们通过独立地控制视觉形状流中的曝光时间和过渡概率,将编码与高级学习因素分离。我们的结果表明,形状的编码和过渡概率的获取不是独立的过程和加法过程,而是相互作用以共同确定SL性能。讨论了这些发现对SL的机械解释的理论意义。

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