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K-medoids algorithm on Indonesian Twitter feeds for clustering trending issue as important terms in news summarization

机译:印度尼西亚Twitter feed上的K-medoids算法将趋势问题作为新闻摘要中的重要术语进行聚类

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News summary could be a solution for information access need. However, it is challenging because of the number of news is growth rapidly. The information integration of several news has some difficulties because sentences that compose news summary could be come from various issues. Short text or Twitter Feeds called tweets could be used to recognize those issues. More weight value are given to the issue terms. Hence, the issue terms will exists within the news summary. This paper focuses on the usage of K-Medoids algorithm for tweet clustering. The data in this study is Twitter feeds in Indonesian. The result experiment shows the effect of re-tweet occurrences and also its influence in the summary result.
机译:新闻摘要可能是满足信息访问需求的解决方案。但是,这是具有挑战性的,因为新闻数量正在迅速增长。几则新闻的信息集成存在一些困难,因为组成新闻摘要的句子可能来自各种问题。称为推文的短文本或Twitter提要可用于识别这些问题。发行条款具有更大的权重值。因此,发布条款将存在于新闻摘要中。本文着重介绍了K-Medoids算法在推特聚类中的应用。本研究中的数据是印度尼西亚的Twitter提要。结果实验显示了重推出现的效果及其在汇总结果中的影响。

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