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How to Get Endorsements? Predicting Facebook Likes Using Post Content and User Engagement

机译:如何获得认可?使用帖子内容和用户参与度预测Facebook喜欢

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摘要

We view the prediction of Facebook likes as a content suggestion problem and show that likes can be much better predicted considered post content or user engagement. Experiments presented are based on a dataset of over 4 million likes collected from over seventy thousands of users in fan pages. The proposed model adopts the similarity metric to appraise how a user may like a document given his or her liked documents, as well as the Restricted Boltzmann Machine (RBM) to estimate whether a user would like a document given the like records of all users. The model achieves a precision of 5-10% and a recall of 2-55%. The commonly used label propagation model is implemented and tested as a baseline. Different models and settings are compared and results show superiority of the proposed model.
机译:我们将对Facebook赞的预测视为内容建议问题,并表明可以更好地预测喜欢的帖子(考虑发布内容或用户参与度)。提出的实验基于在粉丝页面上从7万多个用户那里收集的超过400万个喜欢的数据集。所提出的模型采用相似性度量来评估用户在给定他或她喜欢的文档后可能会喜欢文档的方式,以及采用受限玻尔兹曼机(RBM)来估计用户是否希望在给定所有用户的相似记录的情况下文档。该模型的精度为5-10%,召回率为2-55%。常用的标签传播模型已实现并作为基线进行了测试。比较了不同的模型和设置,结果表明了所提出模型的优越性。

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