Document expansion using relevant web documents for spoken document retrieval

Ryo Masumura, A. Ito, Yu Uno, Masashi Ito, S. Makino
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引用次数: 3

Abstract

Recently, automatic indexing of a spoken document using a speech recognizer attracts attention. However, index generation from an automatic transcription has many problems because the automatic transcription has many recognition errors and Out-Of-Vocabulary words. To solve this problem, we propose a document expansion method using Web documents. To obtain important keywords which included in the spoken document but lost by recognition errors, we acquire Web documents relevant to the spoken document. Then, an index of the spoken document is generated by combining an index that generated from the automatic transcription and the Web documents. We propose a method for retrieval of relevant documents, and the experimental result shows that the retrieved Web document contained many OOV words. Next, we propose a method for combining the recognized index and the Web index. The experimental result shows that the index of the spoken document generated by the document expansion was closer to an index from the manual transcription than the index generated by the conventional method. Finally, we conducted a spoken document retrieval experiment, and the document-expansion-based index gave better retrieval precision than the conventional indexing method.
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文档扩展使用相关的网络文档为口语文档检索
最近,利用语音识别器对语音文档进行自动索引引起了人们的关注。然而,由于自动转录存在许多识别错误和词汇外的问题,自动转录的索引生成存在许多问题。为了解决这个问题,我们提出了一种利用Web文档展开文档的方法。为了获得口语中包含但因识别错误而丢失的重要关键词,我们获取了与口语相关的Web文档。然后,通过组合从自动转录和Web文档生成的索引来生成口语文档的索引。我们提出了一种检索相关文档的方法,实验结果表明,检索到的Web文档包含了大量的面向对象词。接下来,我们提出了一种将识别索引与Web索引相结合的方法。实验结果表明,与传统方法生成的索引相比,该方法生成的口语文档索引更接近于人工抄写的索引。最后,我们进行了口语文档检索实验,结果表明基于文档扩展的索引比传统的索引方法具有更好的检索精度。
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