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A CLIR-oriented OOV translation mining method from bilingual webpages

机译:来自双语网页的CLIR导向的OOV翻译方法

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Translating unknown terms is a major bottleneck for cross-language IR. An effective solution to relevant webpage detection, translation extraction with correct boundaries, and candidate translation ranking is proposed. Topic word translations are used to expand the source query and collect bilingual search engine snippets. Then an improved Frequency Change Measurement method is used to extract valid candidates from noisy, small bilingual corpora. To choose the translation, frequency-distance, surface patterns and phonetic features are used to pick out the correct translation. Experimental results show an impressive performance for unknown term translation mining.
机译:翻译未知术语是跨语号IR的主要瓶颈。提出了一种有效的相关网页检测,用正确边界的翻译提取和候选翻译排名的解决方案。主题Word Translations用于展开源查询并收集双语搜索引擎片段。然后,改进的频率变化测量方法用于从嘈杂,小双语语料库中提取有效候选。要选择翻译,频率距离,表面模式和语音特征用于挑选正确的翻译。实验结果表明,对未知术语翻译挖掘表现出令人印象深刻的表现。

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