Topic Identification System to Filter Twitter Feeds

S. Altammami, O. Rana
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引用次数: 5

Abstract

Twitter is a micro-blogging service where users publish messages of 140 characters. This simple feature makes Twitter the source for concise, instant and interesting information ranging from friends’ updates to breaking news. However, a problem emerge when a user follows many accounts while interested in a subset of its content, which leads to overwhelming tweets he is not interested in receiving. We propose a solution to this problem by filtering incoming tweets based on the user’s interests, which is accomplished through a classifier. The proposed classifier system categorizes tweets into generic classes like Entertainment, Health, Sport, News, Food, Technology and Health. This paper describes the creation and evaluation of the classifier until 89% accuracy obtained.
主题识别系统过滤Twitter feed
推特是一种微博服务,用户可以发布140个字符的消息。这个简单的功能使Twitter成为从朋友更新到突发新闻的简明、即时和有趣信息的来源。然而,当用户关注了许多账户,而对其中的一部分内容感兴趣时,问题就出现了,这会导致他不感兴趣的推文铺天盖地。我们提出了一种解决方案,即根据用户的兴趣过滤传入的tweet,这是通过分类器完成的。提出的分类器系统将推文分为娱乐、健康、体育、新闻、食品、科技和健康等类。本文描述了分类器的创建和评估,直到达到89%的准确率。
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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