语义模型在口语理解中的在线适应

Ali Orkan Bayer, G. Riccardi
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引用次数: 6

摘要

口语理解系统从语音信号中提取语义信息,这些信息通常映射到概念序列上。对话中概念的分布通常是稀疏的。因此,一般模型可能无法对对话的概念分布进行建模,而语义模型可以从适应中受益。本文提出了一种基于实例的语义模型在线自适应方法。我们表明,我们可以通过从训练数据中检索相关实例并使用它们在线适应语义模型来提高SLU系统对话语的性能。基于实例的自适应方案使用了两种不同的相似度度量,编辑距离和n-gram匹配分数在三种不同的自定义上;单词-概念对,单词和概念。通过对SLU输出的n个最佳列表进行评分实验,我们在理解性能方面取得了显著的改进(相对6%)。我们还应用了两级自适应方案,其中自适应首先应用于自动语音识别器(ASR),然后应用于SLU。
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On-line adaptation of semantic models for spoken language understanding
Spoken language understanding (SLU) systems extract semantic information from speech signals, which is usually mapped onto concept sequences. The distribution of concepts in dialogues are usually sparse. Therefore, general models may fail to model the concept distribution for a dialogue and semantic models can benefit from adaptation. In this paper, we present an instance-based approach for on-line adaptation of semantic models. We show that we can improve the performance of an SLU system on an utterance, by retrieving relevant instances from the training data and using them for on-line adapting the semantic models. The instance-based adaptation scheme uses two different similarity metrics edit distance and n-gram match score on three different to-kenizations; word-concept pairs, words, and concepts. We have achieved a significant improvement (6% relative) in the understanding performance by conducting rescoring experiments on the n-best lists that the SLU outputs. We have also applied a two-level adaptation scheme, where adaptation is first applied to the automatic speech recognizer (ASR) and then to the SLU.
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