利用社交特征预测网络新闻的受欢迎程度

H. Singh
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引用次数: 3

摘要

通过社交媒体消费新闻是我们生活中不可或缺的一部分。各种新闻机构使用社交媒体作为传播其内容的媒介。新闻发布前的受欢迎程度预测是一项具有挑战性的任务,因为它依赖于非常大的用户群。新闻在社交平台上的受欢迎程度可以用点赞数、分享数来表示。我们使用点赞数作为受欢迎程度的衡量标准。在本文中,我们首先找出社交平台上影响文章受欢迎程度的特征。这些特征和内容元数据被馈送到各种机器学习模型中。这些模型被用来预测一篇文章是否会流行。基于树的模型可以获得最好的预测结果。这些模型还表明,话题标签、用户提及等社交特征是影响新闻受欢迎程度的重要因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the Popularity of Online News using Social Features
Consuming news via social media is an integral part of our lives. Various news agencies use social media as a medium to spread their content. Popularity prediction of news before publication is a challenging task because it depends on a very large user base. Popularity of news on social platform can be represented using number of likes, shares. We have used number of likes as a popularity measure. In this paper, we first find out features on social platform which can affect popularity of an article. These features and content metadata are fed to various machine learning models. These models are used to predict whether an article is going to be popular or not. Tree based models achieve best results for prediction. These models also show that hashtags, usermentions and other social features are important factors which affect popularity of news.
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