Towards the use of inferred cognitive states in language modeling

Nigel G. Ward, Alejandro Vega
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引用次数: 8

Abstract

In spoken dialog, speakers are simultaneously engaged in various mental processes, and it seems likely that the word that will be said next depends, to some extent, on the states of these mental processes. Further, these states can be inferred, to some extent, from properties of the speaker's voice as they change from moment to moment. As a illustration of how to apply these ideas in language modeling, we examine volume and speaking rate as predictors of the upcoming word. Combining the information which these provide with a trigram model gave a 2.6% improvement in perplexity.
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论在语言建模中使用推断认知状态
在口语对话中,说话者同时处于不同的心理过程中,从某种程度上说,下一个要说的词很可能取决于这些心理过程的状态。此外,在某种程度上,这些状态可以从说话人每时每刻变化的声音属性中推断出来。为了说明如何在语言建模中应用这些思想,我们检查了音量和说话速度作为即将到来的单词的预测因素。将这些信息与三元模型相结合,可以使困惑度提高2.6%。
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