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Application of microblog big data based for web-based communities

机译:微博大数据在基于Web的社区的应用

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摘要

Microblog is a new forum to publish short text. Because of its huge user base and its convenience, it promises to be an excellent instrumentation for feeding and sustaining web-based communities. Therefore, the analysis of microblog topics is introduced and proposed as reference for correct decision making in online communities. This paper briefly introduces the collection method of microblog data and the clustering algorithm of topic classification. Then the clustering algorithm is improved, and the Storm system was introduced. The K-means algorithm before and after the improvement was simulated and analysed in the single-machine environment and Storm framework. The results show that the improved clustering algorithm has a higher classification accuracy and a lower false alarm rate both in the single-machine environment and Storm framework. Under the same clustering algorithm, the algorithm in the Storm framework has a higher classification accuracy, a lower false alarm rate and a shorter recognition time.
机译:MicroBlog是发布短文本的新论坛。由于其巨大的用户基础及其便利性,它有望成为喂养和维持基于网络社区的优秀仪器。因此,引入了对微博主题的分析,并提出了在线社区中正确决策的参考。本文简要介绍了MicroBlog数据的集合方法和主题分类的聚类算法。然后提高了聚类算法,并引入了风暴系统。在单机环境和风暴框架中模拟和分析了改进之前和之后的K-Means算法。结果表明,改进的聚类算法在单机环境和风暴框架中具有较高的分类精度和较低的误报率。在相同的聚类算法下,风暴框架中的算法具有更高的分类精度,较低的误报率和较短的识别时间。

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