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A Statistical Segment-Based Approach for Spoken Language Understanding

机译:基于统计段的口语理解方法

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In this paper we propose an algorithm to learn statistical language understanding models from a corpus of unaligned pairs of sentences and their corresponding semantic representation. Specifically, it allows to automatically map variable-length word segments with their corresponding semantic units and thus, the decoding of user utterances to their corresponding meanings. In this way we avoid the time consuming work of manually associate semantic labels to words, process which is needed by almost all the corpus-based approaches. We use the algorithm to learn the understanding component of a Spoken Dialog System for railway information retrieval in Spanish. Experiments show that the results obtained with the proposed method are very promising, whereas the effort employed to obtain the models is not comparable with this of manually segment the training corpus.
机译:在本文中,我们提出了一种算法,用于从未对齐的句子对及其对应的语义表示的语料库中学习统计语言理解模型。具体地说,它允许自动将可变长度单词段与其对应的语义单元进行映射,从而将用户话语的解码转换为其对应的含义。这样,我们避免了将语义标签与单词手动关联的耗时工作,几乎所有基于语料库的方法都需要该过程。我们使用该算法来学习用于西班牙语的铁路信息检索的语音对话系统的理解组件。实验表明,所提出的方法获得的结果非常有希望,而用于获得模型的工作量与手动分割训练语料库的工作量不相上下。

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