多关系效应的热点话题检测与评价

Nadir Emre Zirbilek, M. Erakin, Tansel Özyer, R. Alhajj
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引用次数: 1

摘要

随着社交媒体的发展,Twitter已经成为人们最常用的微博交流平台之一。由于Twitter的广泛偏好,公众中的热门问题,本地或全球新闻以及日常生活故事等事件都可以立即在Twitter上发布。因此,大量的热点话题是由Twitter用户实时创建的。这些主题可以展示日常生活中的每一个事件。因此,热点话题检测可以应用于观察公众判断、产品推荐、发生率检测等领域。在本文中,我们提出了一种检测Twitter热门话题的方法,并评估转发和标签等多关系对热门话题的影响。该数据集是通过使用GetOldTweets3 API获取特定时间和地点的tweet来生成的。然后利用LDA主题建模算法对每个多关系进行热点话题识别。最后,每个关系的影响是用相干分数来描述的)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hot topic detection and evaluation of multi-relation effects
With the growth of social media, Twitter has become one of the most popularly used microblogging communication platforms between people. Due to the wide preference of Twitter, popular issues in public, events like local or global news and daily life stories can immediately publish on Twitter. Thus, a substantial number of hot topics are created by Twitter users in real-time. These topics can exhibit every incident of everyday life. Therefore, detection of hot topics can be used in many applications such as observing public judgment, product recommendation, and incidence detection. In this paper, we propose a method for detecting Twitter hot topics and evaluate the effect of multi-relations such as retweets and hashtags on hot topics. The dataset was generated by fetching tweets for a certain time and location by using GetOldTweets3 API. Then using the LDA topic modeling algorithm the hot topics were identified for each multi relation. Finally, the effect of each relation is described by using the coherence scores)
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