首页> 外文期刊>Journal of speech, language, and hearing research: JSLHR >Individual Differences in Distributional Learning for Speech: What's Ideal for Ideal Observers?
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Individual Differences in Distributional Learning for Speech: What's Ideal for Ideal Observers?

机译:分类学习的个人差异:理想观察员的理想是什么?

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Purpose: Speech perception is facilitated by listeners' ability to dynamically modify the mapping to speech sounds given systematic variation in speech input. For example, the degree to which listeners show categorical perception of speech input changes as a function of distributional variability in the input, with perception becoming less categorical as the input, becomes more variable. Here, we test the hypothesis that higher level receptive language ability is linked to the ability to adapt to low-level distributional cues in speech input. Method: Listeners (n = 58) completed a distributional learning task consisting of 2 blocks of phonetic categorization for words beginning with /g/ and /k/. In 1 block, the distributions of voice onset time values specifying /g/ and /k/ had narrow variances (i.e., minimal variability). In the other block, the distributions of voice onset times specifying /g/ and /k/ had wider variances (i.e., increased variability). In addition, all listeners completed an assessment battery for receptive language, nonverbal intelligence, and reading fluency. Results: As predicted by an ideal observer computational framework, the participants in aggregate showed identification responses that were more categorical for consistent compared to inconsistent input, indicative of distributional learning. However, the magnitude of learning across participants showed wide individual variability, which was predicted by receptive language ability but not by nonverbal intelligence or by reading fluency. Conclusion: The results suggest that individual differences in distributional learning for speech are linked, at least in part, to receptive language ability, reflecting a decreased ability among those with weaker receptive language to capitalize on consistent input distributions.
机译:目的:通过倾听者动态修改映射的能力,促进语音感知,给出语音输入的系统变化。例如,听众达到语音输入的分类感知的程度随着输入中的分布变异性的函数而言,具有对输入的感知变得更少,变得更加可变。在这里,我们测试了更高层次的接收语言能力与适应语音输入中的低级分布线索的能力相关的假设。方法:侦听器(n = 58)完成了分配学习任务,由/ g / k / k / k / k / k / k / k的单词组成的分布学习任务组成。在1个块中,语音起始时间值的分布指定/ g /和/ k /具有窄的差异(即,最小可变性)。在另一个块中,语音发作时间的分布指定/ g /和/ k /具有更宽的差异​​(即,增加的可变性)。此外,所有听众都完成了评估电池,以进行接受语言,非语言智力和阅读流畅性。结果:通过理想的观察者计算框架预测,聚集体的参与者显示了与不一致的输入相比,与不一致的投入相比,与不一致的投入相比,识别响应是更加分类的。然而,参与者的学习程度呈现出广泛的个性变异性,这是通过接受语言能力而不是非语言智力或通过阅读流畅性来预测的。结论:结果表明,言论的分布学习的个体差异至少部分地与接受语言能力相连,反映了具有较弱性语言的人中的能力下降,以利用一致的输入分布。

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