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Cache neural network language models based on long-distance dependencies for a spoken dialog system

机译:基于远程依赖关系为语音对话系统缓存神经网络语言模型

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The integration of a cache memory into a connectionist language model is proposed in this paper. The model captures long term dependencies of both words and concepts and is particularly useful for Spoken Language Understanding tasks. Experiments conducted on a human-machine telephone dialog corpus are reported, and an increase in performance is observed when features of previous turns are taken into account for predicting the concepts expressed in a user turn. In terms of Concept Error Rate we obtained a statistically significant improvement of 3.2 points over our baseline (10% relative improvement) on the French Media corpus.
机译:本文提出将高速缓存存储器集成到连接语言模型中。该模型捕获了单词和概念的长期依赖关系,对于口语理解任务特别有用。报告了在人机电话对话语料库上进行的实验,并且当考虑到先前回合的特征以预测用户回合中表达的概念时,可以观察到性能的提高。就概念错误率而言,我们在French Media语料库上的基线达到了3.2个百分点的统计学显着改善(相对改善了10%)。

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