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User Embedding for Scholarly Microblog Recommendation

机译:用户嵌入学术微博推荐

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Nowadays, many scholarly messages are posted on Chinese microblogs and more and more researchers tend to find scholarly information on microblogs. In order to exploit microblogging to benefit scientific research, we propose a scholarly microblog recommendation system in this study. It automatically collects and mines scholarly information from Chinese microblogs, and makes personalized recommendations to researchers. We propose two different neural network models which learn the vector representations for both users and microblog texts. Then the recommendation is accomplished based on the similarity between a user's vector and a microblog text's vector. We also build a dataset for this task. The two embedding models are evaluated on the dataset and show good results compared to several baselines.
机译:如今,许多学术信息都发布在中国微博上,越来越多的研究人员倾向于找到关于微博的学术信息。为了利用微博来利用科学研究,我们提出了本研究的学术微博推荐制度。它自动从中国微博中收集和挖掘学术信息,并向研究人员提供个性化的建议。我们提出了两个不同的神经网络模型,用于学习用户和微博文本的矢量表示。然后基于用户矢量与微博文本的向量之间的相似性完成推荐。我们还为此任务构建数据集。与几个基线相比,在数据集中评估了两个嵌入模型,并显示出良好的结果。

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