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Domain-specific user preference prediction based on multiple user activities

机译:基于多个用户活动的域特定用户偏好预测

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Inferring latent user preferences using both structured and unstructured data is an important social computing task. In this paper, we propose a user preference representation based on user activities embedded in unstructured data to better encode the homophily theory. The representation of an individual user is learned using a embedding based method to integrate latent user preferences in social media. The method has the ability to integrate a variety of user activities based cues from user comments, user social network (i.e; follower/followee connections) and user interested topics which are indicated by the topics a user has participated in. Experiments are conducted to evaluate the prediction of each user's favorite team as a part of user preferences in a dataset collected from the Hu-pu basketball discussion forum.1 Results clearly indicate that our proposed user representation outperforms other user representation baselines. Integrating user social network and user interested topics with user comments can improve the overall performance of user preference prediction.
机译:使用结构化和非结构化数据推断潜在用户偏好是一个重要的社交计算任务。在本文中,我们提出了基于在非结构化数据中的用户活动的用户偏好表示,以更好地编码同意理论。使用基于嵌入的方法来学习单个用户的表示,以在社交媒体中集成潜在用户首选项。该方法能够将基于用户的提示的各种用户活动集成在用户评论中,用户社交网络(即:追随者/追随者连接)和用户参与主题指示的用户感兴趣的主题。进行实验以评估作为从Hu-Pu篮球讨论论坛收集的数据集中作为用户偏好的一部分的预测.1结果清楚地表明我们所提出的用户表示优于其他用户表示基准。使用用户评论集成用户社交网络和用户感兴趣的主题可以提高用户偏好预测的整体性能。

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