Research on Improvement of Text Processing and Clustering Algorithms in Public Opinion Early Warning System

Kongyu Yang, Ruijie Miao
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引用次数: 5

Abstract

In order to provide the necessary data for Public opinion monitoring and trend warning, this paper did some researches on text processing and clustering algorithms based on hot topics of the Weibo. Data that get from Weibo were classification data which contain two properties. To adapt this feature and meet the requirement of public opinion trends warning, hamming distance was used to do text similarity computing. By improving the traditional K-means algorithm, a new K-mode algorithm which is used to text clustering on hot topics was achieved. Simulation and results analysis indicated the text processing method was accurate and suitable to the microblog public opinion early warning.
舆情预警系统中文本处理与聚类算法的改进研究
为了给舆情监测和趋势预警提供必要的数据,本文基于微博热点话题对文本处理和聚类算法进行了研究。从微博获取的数据是分类数据,包含两个属性。为适应这一特点,满足舆情趋势预警的要求,采用汉明距离进行文本相似度计算。通过对传统K-means算法的改进,实现了一种新的用于热点话题文本聚类的K-mode算法。仿真和结果分析表明,文本处理方法准确、适用于微博舆情预警。
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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