Deep learning based high similarity automatic retrieval algorithm for vocabulary interpretation of workers of Food Sector in china

Xuezhong Wu, Cong Wu
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引用次数: 0

Abstract

In order to build a high similarity English vocabulary interpretation domain knowledge base and ensure the automatic retrieval effect of high similarity English vocabulary interpretation, this paper standardizes the automatic retrieval specification of authoritative interpretation of high similarity English vocabulary knowledge, and takes high similarity English vocabulary as the source corpus of the knowledge base. On the basis of the existing work, this paper attempts to propose an automatic retrieval algorithm of high similarity English word interpretation based on deep learning. The goal is to diversify the sources of high similarity English word knowledge and achieve the accuracy of automatic retrieval of word interpretation while ensuring a certain knowledge coverage. A suitable domain knowledge base of machine-readable dictionary is constructed through a new method It can not only provide accurate knowledge information for high similarity English vocabulary, but also provide retrieval verification for user needs analysis and high similarity English vocabulary indexing of snippet. The experimental results show that the algorithm based on deep learning is effective and can fully meet the research requirements.
基于深度学习的高相似度自动检索算法在中国食品行业工人词汇解释中的应用
为了构建高相似度英语词汇解释领域知识库,保证高相似度英语词汇解释的自动检索效果,本文规范了高相似度英语词汇知识权威解释自动检索规范,并以高相似度英语词汇作为知识库的源语料库。在现有工作的基础上,本文尝试提出一种基于深度学习的高相似度英语单词解释自动检索算法。目标是使高相似度英语单词知识来源多样化,在保证一定知识覆盖率的情况下,实现单词解释自动检索的准确性。通过该方法构建了适合机读词典的领域知识库,不仅可以为高相似度英语词汇提供准确的知识信息,还可以为用户需求分析和高相似度英语词汇片段索引提供检索验证。实验结果表明,基于深度学习的算法是有效的,完全可以满足研究要求。
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