基于Web大数据的舆情热点检测模型研究

C. Fan, Yuexin Wu, Jun Zhang, Tianlin Zhao
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引用次数: 7

摘要

在网络舆情热点分析中,网络评论中的观点和情感对新闻话题和重点的识别起着重要的作用,但这方面的研究却很少。此外,来自不同数据源的报告被以相同的权重处理,这可能无法真正描述民意。本文提出了一种基于定量评论和情感的热点舆情发现模型。在该模型中,在报告向量存在的情况下,应用Web意见挖掘。通过构建网络评论词典,以向量的形式量化网络评论的倾向性和强度。本文还提出了一种改进的Page-Rank算法来评估Web意见的来源。实验表明,该模型可以降低意见发现的误检率和缺失率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research of public opinion hotspot detection model based on Web big data
In the Web public opinion hotspot analysis, the opinion and emotion in the Web comment play an important role in identifying news topic and emphasis, where few research are carried out. In addition, reports from different data source are processed with the same weight, which may not actually describe the public opinion. This paper propose a hot public opinion discovery model based on quantitative comment and emotion. In this model, Web opinion mining is applied in presence of report vector. By constructing the Web opinion dictionary, the inclination and intensity of Web comment are quantitated by the form of vector. A modified Page-Rank algorism is also proposed to evaluate the source of the Web opinion. Experiment shows that this model can reduce the false detection rate and missing rate of opinion discovery.
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