网络新闻的话题建模。基于潜在Dirichlet分配(LDA)的门户

Mohammad Rezza Fahlevvi, Azhari Sn
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引用次数: 2

摘要

在线新闻门户网站上显示的新闻数量。通常不表明正在讨论的主题,但可以阅读和分析新闻。你可以在正在讨论的新闻中找到主要问题和趋势。如果你有一种快速有效的方法来找到新闻中的热门话题,那将是最好的选择。可以用来解决这个问题的方法之一是主题建模。主题建模是必要的,使用户能够轻松快速地了解现代主题的发展。主题建模中的算法之一是潜在狄利克雷分配(LDA)。该研究阶段从数据收集、预处理、n元语法形成、字典表示、加权、主题模型验证、主题模型形成和主题建模结果开始。基于主题评估的结果。使用连贯性进行主题建模的最佳值与通过次数有关。主题的数量产生了20个关键,其中5个案例的连贯性值为0.53。基于标准相干值,它可以说是相对稳定的。
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Topic Modeling on Online News.Portal Using Latent Dirichlet Allocation (LDA)
The amount of News displayed on online news portals. Often does not indicate the topic being discussed, but the News can be read and analyzed. You can find the main issues and trends in the News being discussed. It would be best if you had a quick and efficient way to find trending topics in the News. One of the methods that can be used to solve this problem is topic modeling. Theme modeling is necessary to allow users to easily and quickly understand modern themes' development. One of the algorithms in topic modeling is the Latent Dirichlet Allocation (LDA). This research stage begins with data collection, preprocessing, n-gram formation, dictionary representation, weighting, topic model validation, topic model formation, and topic modeling results.            Based on the results of the topic evaluation, the. The best value of topic modeling using coherence was related to the number of passes. The number of topics produced 20 keys, five cases with a 0.53 coherence value. It can be said to be relatively stable based on the standard coherence value.
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审稿时长
12 weeks
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