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Approaches to mathematical modeling of context effects in sentence recognition

机译:句子识别中语境效应的数学建模方法

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摘要

Probabilistic models to quantify context effects in speech recognition have proven their value in audiology. Boothroyd and Nittrouer [J. Acoust. Soc. Am. 84, 101-114 (1988)] introduced a model with the j-factor and k-factor as context parameters. Later, Bronkhorst, Bosman, and Smoorenburg [J. Acoust. Soc. Am. 93, 499-509 (1993)] proposed an elaborated mathematical model to quantify context effects. The present study explores existing models and proposes a new model to quantify the effect of context in sentence recognition. The effect of context is modeled by parameters that represent the change in the probability that a certain number of words in a sentence are correctly recognized. Data from two studies using a Dutch sentence-in-noise test were analyzed. The most accurate fit was obtained when using signal-to-noise ratio-dependent context parameters. Furthermore, reducing the number of context parameters from five to one had only a small effect on the goodness of fit for the present context model. An analysis of the relationships between context parameters from the different models showed that for a change in word recognition probability, the different context parameters can change in opposite directions, suggesting opposite effects of sentence context. This demonstrates the importance of controlling for the recognition probability of words in isolation when comparing the use of sentence context between different groups of listeners.
机译:语音识别中量化语境效应的概率模型在听力学中已经证明了其价值。Boothroyd和Nittrouer[J.Auditor.Soc.Am.84101-114(1988)]介绍了一个以J因子和k因子作为上下文参数的模型。后来,Bronkhorst、Bosman和Smoorenburg[J.Acoustic.Soc.Am.93499-509(1993)]提出了一个详细的数学模型来量化语境效应。本研究探索了现有的模型,并提出了一个新的模型来量化语境在句子识别中的作用。语境的影响是通过参数来建模的,这些参数表示句子中一定数量的单词被正确识别的概率的变化。对两项使用荷兰语句子进行噪音测试的研究的数据进行了分析。当使用信噪比相关的上下文参数时,获得了最精确的拟合。此外,将上下文参数的数量从五个减少到一个,对当前上下文模型的拟合度影响很小。对来自不同模型的上下文参数之间关系的分析表明,对于单词识别概率的变化,不同的上下文参数可以朝相反的方向变化,这表明句子上下文的效果相反。这表明了在比较不同听众群体之间句子语境的使用时,控制孤立词的识别概率的重要性。

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  • 作者

    Smits Cas; Zekveld Adriana A.;

  • 作者单位

    Vrije Univ Amsterdam Amsterdam Publ Hlth Res Inst Amsterdam UMC Otolaryngol Head &

    Neck Surg Ear &

    Hearing De Boelelaan 1117 Amsterdam Netherlands;

    Vrije Univ Amsterdam Amsterdam Publ Hlth Res Inst Amsterdam UMC Otolaryngol Head &

    Neck Surg Ear &

    Hearing De Boelelaan 1117 Amsterdam Netherlands;

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  • 正文语种 eng
  • 中图分类 声学;
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