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Learning to Rank Tweets with Author-Based Long Short-Term Memory Networks

机译:通过基于作者的长期短期记忆网络学习对推文进行排名

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Recommending tweets that a user might retweet plays an important role either in satisfying users' information needs or in the dissemination of information in microblogging services such as Twitter. In this paper, we propose a deep neural network for tweet recommendations with author-based Long Short-Term Memory networks for learning the latent representations/embeddings of tweets. Our approach predicts the preference score of a tweet based on (1) the similarity between the embed-dings of a user and the tweet, (2) the similarity between the embeddings of the user and the author (who posted the tweet). Despite its simplicity, we present that our approach can significantly outperform state-of-the-art methods with or without explicit features for recommending tweets in terms of five evaluation metrics.
机译:推荐用户可能转发的推文在满足用户的信息需求或在微博服务(如Twitter)中传播信息方面起着重要作用。在本文中,我们提出了一个用于推文推荐的深度神经网络,以及一个基于作者的长期短期记忆网络,用于学习推文的潜在表示/嵌入。我们的方法基于(1)用户的嵌入和推文之间的相似度,(2)用户和作者(发布了推文的作者)之间的相似度来预测推文的偏好得分。尽管它很简单,但我们认为我们的方法在五个评估指标方面,无论是否推荐显式功能,都可以大大优于最新方法。

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