Intelligent retrieval method of library document information based on hidden topic mining

Web Intell. Pub Date : 2022-06-07 DOI:10.3233/web-210484
Yujie An, Yuwei Yan
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Abstract

In order to overcome the problems of retrieval accuracy and time-consuming of traditional document information retrieval methods, this paper designs an intelligent retrieval method of library document information based on hidden topic mining. Firstly, LDA model is used to mine the hidden topics of library document information, and then, based on the mining results, similarity degree of document information is calculated in inference network model. Finally, the Bayesian model is constructed in the sample space to retrieve the library literature information under the maximum retrieval space coverage. Experimental results show that, compared with traditional retrieval methods, the proposed method improves the retrieval accuracy significantly, with the highest retrieval accuracy reaching 99%, and the retrieval time is significantly reduced, indicating that the proposed method effectively improves the retrieval accuracy and timeliness.
基于隐藏主题挖掘的图书馆文献信息智能检索方法
为了克服传统文献信息检索方法检索精度和耗时的问题,本文设计了一种基于隐藏主题挖掘的图书馆文献信息智能检索方法。首先利用LDA模型挖掘图书馆文档信息的隐含主题,然后根据挖掘结果在推理网络模型中计算文档信息的相似度。最后,在样本空间中构建贝叶斯模型,实现最大检索空间覆盖率下的图书馆文献信息检索。实验结果表明,与传统检索方法相比,所提方法显著提高了检索精度,最高检索精度达到99%,检索时间显著缩短,表明所提方法有效提高了检索精度和时效性。
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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