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Keyword Based Tweet Extraction and Detection of Related Topics

机译:基于关键字的推特提取和相关主题的检测

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摘要

Twitter is a micro blogging site that helps the transfer of information as short length tweets. The large quantum of information makes it necessary to find out methods and tools to summarize them. Our research work is to propose a method, which collect tweets using a specific keyword and then, summarizes them to find out topics related to that keyword. The topic detection is done by using clusters of frequent patterns. Already existing pattern oriented topic detection techniques suffer from the wrong correlation problem of patterns. In this paper, we propose two algorithms, TDA (Topic Detection using AGF) and TCTR (Topic Clustering and Tweet Retrieval), which will help to overcome this problem. From various experimental results, it is observed that the proposed method can maintain good performance irrespective of the size of the data set.
机译:Twitter是一个微博客网站,可帮助您将信息作为短信息发送。信息量巨大,因此有必要找出方法和工具进行汇总。我们的研究工作是提出一种方法,该方法使用特定的关键字收集推文,然后对其进行汇总以找出与该关键字相关的主题。通过使用频繁模式的群集来完成主题检测。现有的面向模式的主题检测技​​术已经遭受了错误的模式相关性问题。在本文中,我们提出了两种算法,TDA(使用AGF的主题检测)和TCTR(主题聚类和Tweet检索),这将有助于克服此问题。从各种实验结果可以看出,所提出的方法可以保持良好的性能,而与数据集的大小无关。

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