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Automatic Detection of Sentence and Clause Units using Local Syntactic Dependency

机译:使用局部句法依存关系自动检测句子和子句单位

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For robust detection of sentence and clause units in spontaneous speech such as lectures and meetings, we propose a novel cascaded chunking strategy which incorporates syntactic and semantic information. Application of general syntactic parsing is difficult for spontaneous speech having ill-formed sentences and disfluencies, especially for erroneous transcripts generated by ASR systems. Therefore, we focus on the local syntactic dependency of adjacent words and phrases, and train binary classifiers based on SVM (support vector machines) for this purpose. An experimental evaluation using spontaneous talks of the CSJ (Corpus of Spontaneous Japanese) demonstrates that the proposed dependency analysis can be robustly performed and is effective for clause/sentence unit detection in ASR outputs
机译:为了可靠地检测诸如演讲和会议等自发讲话中的句子和从句单元,我们提出了一种新颖的级联分块策略,该策略结合了句法和语义信息。对于具有错误形式的句子和不满的自发语音,尤其是对于ASR系统生成的错误成绩单,很难应用通用语法分析。因此,我们专注于相邻单词和短语的局部句法依赖性,并为此目的基于SVM(支持向量机)训练二进制分类器。使用CSJ(日本语的Corpus)的自发讲话进行的实验评估表明,所提出的依赖关系分析可以可靠地执行,并且对于ASR输出中的子句/句子单元检测是有效的

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