作者
Alexandru Tatar, Panayotis Antoniadis, Marcelo Dias de Amorim, Serge Fdida
发表日期
2014/12
期刊
Social Network Analysis and Mining
卷号
4
页码范围
1-12
出版商
Springer Vienna
简介
News articles are an engaging type of online content that captures the attention of a significant amount of Internet users. They are particularly enjoyed by mobile users and massively spread through online social platforms. As a result, there is an increased interest in discovering the articles that will become popular among users. This objective falls under the broad scope of content popularity prediction and has direct implications in the development of new services for online advertisement and content distribution. In this paper, we address the problem of predicting the popularity of news articles based on user comments. We formulate the prediction task as a ranking problem, where the goal is not to infer the precise attention that a content will receive but to accurately rank articles based on their predicted popularity. Using data obtained from two important news sites in France and Netherlands, we analyze the …
引用总数
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学术搜索中的文章
A Tatar, P Antoniadis, MD Amorim, S Fdida - Social Network Analysis and Mining, 2014