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Modeling Cue Trading in Human Word Recognition

机译:在人类单词识别中模拟提示交易

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Classical phonetic studies have shown that acoustic-articulatory cues can be interchanged without affecting the resulting phoneme percept ('cue trading'). Cue trading has so far mainly been investigated in the context of phoneme identification. In this study, we investigate cue trading during recognition of words, the units of speech through which we communicate. This paper aims to provide a method to quantify cue trading effects by using a computational model of human word recognition. This model takes the acoustic signal as input and represents speech using articulatory feature streams. Importantly, it allows cue trading and underspecification. Its set-up is inspired by the functionality of Fine-Tracker, a recent computational model of human word recognition. This approach makes it possible, for the first time, to quantify cue trading in terms of a trade-off between features and to investigate cue trading in the context of a word recognition task.
机译:经典的语音研究表明,可以互换发音语音的提示,而不会影响最终的音素感知(“提示交易”)。到目前为止,提示交易主要在音素识别的背景下进行了研究。在这项研究中,我们研究了单词识别过程中的提示交易,即我们通过其进行交流的语音单位。本文旨在提供一种通过使用人类单词识别的计算模型来量化线索交易效果的方法。该模型将声音信号作为输入,并使用发音特征流表示语音。重要的是,它允许提示交易和规格不足。它的设置受到Fine-Tracker功能的启发,Fine-Tracker是人类单词识别的最新计算模型。这种方法首次使通过特征之间的权衡量化线索交易成为可能,并可以在单词识别任务的背景下调查线索交易。

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