應用語料庫和語意相依法則於中文語音文件之摘要 (Spoken Document Summarization Using Topic-Related Corpus and Semantic Dependency Grammar) [In Chinese]

Chia-Hsin Hsieh, Chien-Lin Huang, Chung-Hsien Wu
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引用次数: 10

Abstract

The paper presents a spoken document summarization scheme using a topic-related corpus and semantic dependency grammar. The summarization score considers speech recognition confidence, word significance, word trigram, semantic dependency grammar (SDG) and probabilistic context free grammar (PCFG). In addition, a topic-related corpus consisting of keywords as well as articles is used to estimate the word significance score using latent semantic indexing (LSI). Semantic relations between words are determined by SDG using HowNet and Sinica Treebank. A dynamic programming algorithm is applied to decide the summarization ratio and look for the best summarization result according to summarization scores. Experimental results indicate that the proposed approach effectively extracts important words with semantic dependency and gives a promising speech summary.
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应用语料库和语意相依法则于中文语音文件之摘要 (Spoken Document Summarization Using Topic-Related Corpus and Semantic Dependency Grammar) [In Chinese]
提出了一种基于主题相关语料库和语义依赖语法的口语文档摘要方案。摘要得分考虑语音识别置信度、单词重要性、单词三联体、语义依赖语法(SDG)和概率上下文无关语法(PCFG)。此外,使用由关键词和文章组成的主题相关语料库,使用潜在语义索引(LSI)来估计单词显著性得分。SDG使用知网和中研树库来确定词间的语义关系。采用动态规划算法确定总结比例,并根据总结分数寻找最佳的总结结果。实验结果表明,该方法能够有效地提取具有语义依赖性的重要词,并给出了较好的语音摘要。
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