基于共现投影的跨语言相似文档检索

Jiao Liu, Rong-yi Cui, Yahui Zhao
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引用次数: 2

摘要

本文针对中文、英文、韩文等多语种文档,研究了一种跨语种文档相似度的计算方法。首先,通过共现投影将文档表示为其他语言空间中的向量;然后,利用潜在的语义分析,弥补了不同语言之间因一词多义而造成的向量损失。最后,在具有等价语义信息的同一语言空间中计算文档的跨语言余弦相似度。利用翻译语料库建立汉语、英语、韩语之间的词汇对应关系,避开了外部词典和知识库。结果表明,共现投影在计算跨语言文档相似度方面效果显著,译文检索准确率可达95%,验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Cross-lingual similar documents retrieval based on co-occurrence projection
In this paper, an approach to calculating the similarity among cross-lingual documents was researched for multilingual documents including Chinese, English, and Korean. Firstly, document was represented as a vector in the space of other language by co-occurrence projection. And then, taking advantage of the latent semantic analysis, the loss of vector caused by polysemy between different languages was remedied. Finally, the cross-lingual cosine similarity of documents was calculated in the same language space possessing equivalent semantic information. External dictionary and knowledge base were sidestepped by using the translation corpus to establish the lexical correspondence among Chinese, English, and Korean. The results show that co-occurrence projection has a great effect in calculating cross-lingual documents similarity, moreover, the retrieval accuracy of translation can be reached 95%, which verifies the effectiveness of the proposed method.
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