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Paper Recommendation Based on Author-paper Interest and Graph Structure

机译:基于作者纸张兴趣和图形结构的纸质建议

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The recommendation system can recommend information to users efficaciously, which helps many users to obtain information in different fields. The paper recommendation is a research topic to provide authors with personalized papers of interest. However, most existing approaches equally treat title and abstract as the input to learn the representation of a paper, ignoring the author's interest and structure information of the academic network. In the paper recommendation system, authors and papers and the interaction of their information have a crucial impact on the efficiency and accuracy of the recommendations. However, most recommendation systems are usually designed based only on users. Therefore, we propose a method based on the author's periodic interest and academic graph network structure to obtain as much effective information as possible to recommend papers. Extensive offline experiments on large-scale real data show that our method outperforms the representative baselines.
机译:建议系统可以向用户推荐信息,这有助于许多用户在不同的领域获取信息。 该论文推荐是一项研究主题,提供了具有个性化的兴趣论文的作者。 然而,大多数现有方法同样地处理标题和摘要作为学习纸张代表的投入,忽略了作者的兴趣和学术网络的结构信息。 在论文推荐系统中,作者和论文以及他们信息的互动对建议的效率和准确性的影响至关重要。 但是,大多数推荐系统通常仅基于用户设计。 因此,我们提出了一种基于作者定期兴趣和学术图网络结构的方法,以获得尽可能多的有效信息来推荐论文。 大规模实际数据的广泛离线实验表明,我们的方法优于代表性基准。

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