Twitter中印尼新闻策展人分类的改进

Jaka E. Sembodo, E. B. Setiawan, Z. Baizal
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引用次数: 2

摘要

印尼新闻策展人是印尼的Twitter用户,他们的特点是:关注新闻文章的发展,通过转发或在Twitter上复制URL分享新闻,或者在Twitter上对新闻文章进行反馈。这些用户在帮助新闻进程中扮演着重要的角色,尤其是作为Twitter的新闻来源。一般来说,推特上有两种新闻管理员。第一个新闻故事馆长,是推特用户手动制作的推文。第二个新闻聚合器,是Twitter用户使用第三方工具自动发布tweet。在我们之前关于这个主题的工作中,我们开发了一个框架,用于使用七个特征对Twitter用户进行分类,例如:个人资料描述、关注者、位置、url、提及、转发和一般tweet。系统的性能产生了86.15%的准确率。在本文中,我们的目的是提高之前框架的性能,增加了网站、验证状态、标签、点赞数和转发数五个特性。使用有监督机器学习的系统准确率达到93.66%,然后使用特征子集选择方法对其进行优化,准确率达到95.55%。最后,我们将框架实现为一个基于web的工具,该工具可以自动将印度尼西亚Twitter用户分为三类(新闻故事管理员、新闻聚合器,而不是两者)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The improvement of Indonesian news curator classification in Twitter
Indonesian news curators is Indonesian Twitter users that have characteristics like: following the development of news article, sharing the news via retweet or copying URL in tweet, or also giving feedbacks about news article in Twitter. This users have important role in helping the process of journalistic especially as news sources in Twitter. In generally, there are two kind of news curators in Twitter. First news story curator, it was Twitter user that made the tweet manually. Second news aggregator, it was Twitter user that made tweet automatically using third-party tools. Our previous work about this topic, we developed a framework for classifying this Twitter user using seven features such as: profile description, follower, location, URLs, mention, retweet and general tweet. The performance of system produced 86.15% accuracy. In this paper, our purpose is to improve the performance of previous framework with adding five features such as website, verified status, hashtag, number of like and number of retweet. The performance of system using supervised machine learning produced 93.66% accuracy, then we optimized it using Feature Subset Selection method and produced 95.55% accuracy. Lastly, we implemented the framework be a web-based tool that can classified Indonesian Twitter user into three classes (news story curator, news aggregator, not both) automatically.
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