基于双向n图和最大熵的组合方法的话语分割

Ding Liu, Chengqing Zong
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引用次数: 12

摘要

本文提出了一种基于最大熵加权双向n图的语言模型将话语分割成句子的新方法。通常的N-gram算法只从左到右搜索文本中的句子边界。因此,文本中的候选句子边界主要是根据其左上下文来评估的,而没有充分考虑其右上下文。使用这种方法,话语通常被分成不完整的句子或片段。为了同时利用候选句子边界的左右上下文,我们提出了一种基于最大熵加权双向n图的语言建模方法。实验结果表明,该方法在汉语和英语语音分割方面都明显优于常用的N-gram算法。
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Utterance Segmentation Using Combined Approach Based on Bi-directional N-gram and Maximum Entropy
This paper proposes a new approach to segmentation of utterances into sentences using a new linguistic model based upon Maximum-entropy-weighted Bi-directional N-grams. The usual N-gram algorithm searches for sentence boundaries in a text from left to right only. Thus a candidate sentence boundary in the text is evaluated mainly with respect to its left context, without fully considering its right context. Using this approach, utterances are often divided into incomplete sentences or fragments. In order to make use of both the right and left contexts of candidate sentence boundaries, we propose a new linguistic modeling approach based on Maximum-entropy-weighted Bi-directional N-grams. Experimental results indicate that the new approach significantly outperforms the usual N-gram algorithm for segmenting both Chinese and English utterances.
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