机器翻译中模糊语义选择方法及LBP算法的集成

Jun Chen
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引用次数: 0

摘要

本文研究了基于LBP算法的机器英语翻译的准确性和合理性,提出了一种基于模糊语义最优解选择的机器英语翻译方法。构建机器英语翻译信息提取模型,建立机器英语翻译模糊语义主题词属性表,以短语为基本粒度,生成语义上与翻译假设集一致的释义结果。利用大规模平行语料库提取短语释义资源。实验测试结果表明,使用该方法进行机器英语翻译,语义信息的查全性能提高了6.7%,主题词的特征匹配度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selection Method of Fuzzy Semantics in Machine Translation and the Integration of LBP Algorithm
This paper studies the accuracy and rationality of machine English translation based on the LBP algorithm, and proposes a machine English translation method based on the selection of the optimal solution of fuzzy semantics. Construct an information extraction model for machine English translation, establish a fuzzy semantic topic word attribute table for machine English translation, and use phrases as the basic granularity to produce paraphrase results that are semantically consistent with the translation hypothesis set. Extract phrase paraphrase resources by using massively parallel corpus. Experimental test results show that using this method for machine English translation improves the recall performance of semantic information by 6.7%, and the feature matching degree of topic words is higher.
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