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Building a term suggestion and ranking system based on a probabilistic analysis model and a semantic analysis graph

机译:基于概率分析模型和语义分析图构建术语建议和排名系统

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摘要

Term suggestion is a kind of information retrieval technique that attempts to suggest relevant terms to help users formulate more effective queries and reduce unnecessary search steps. In this paper, we apply two semantic analysis methods, the probabilistic analysis model and semantic analysis graph, to design a term suggestion system that can effectively deal with the problems of synonymy and polysemy. The main contributions of this paper are the following. First, we apply two semantic analysis methods to design a high-performance term suggestion system. Second, we design an intelligent mechanism that can effectively balance cost and performance to minimize the number of iterations required for our system.
机译:术语建议是一种信息检索技术,它试图建议相关术语以帮助用户制定更有效的查询并减少不必要的搜索步骤。本文采用概率分析模型和语义分析图两种语义分析方法,设计了可以有效处理同义和多义问题的术语建议系统。本文的主要贡献如下。首先,我们应用两种语义分析方法来设计高性能的术语建议系统。其次,我们设计了一种智能机制,可以有效地平衡成本和性能,以最大程度地减少系统所需的迭代次数。

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