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Collaboratively Learning Latent Factors and Correlations for New Paper Influence Predication

机译:协同学习潜在影响因素和新论文影响预测的相关性

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There are an increasing number of papers published every year. It is desired for researchers to find the new high-quality papers, which is also a challenging task due to the lack of citation information. In this paper, we propose a novel method to predicate a new paper influence by collaboratively learning the latent vectors of paper features and correlations. We propose the concept topic related authority to integrate the dynamic topic model with paper citations so as to learn how content and authors influence a paper quality. We adopt the Factorization Machine method to collaboratively learn the latent vectors of correlations between different paper features. Comparing with traditional methods, it does not require the citation information to evaluate a paper quality, which is appropriate for new published papers. We conduct extensive evaluation against a real dataset crawled from ACM Digital Library. The results show that our method outperforms the other methods.
机译:每年发表的论文越来越多。研究人员希望找到新的高质量论文,由于缺乏引文信息,这也是一项艰巨的任务。在本文中,我们提出了一种通过协作学习纸张特征和相关性的潜在向量来预测新纸张影响力的新方法。我们提出与概念主题相关的权限,以将动态主题模型与论文引用相结合,从而了解内容和作者如何影响论文质量。我们采用分解机方法来协作学习不同纸张特征之间相关性的潜在向量。与传统方法相比,它不需要引用信息即可评估论文质量,这适用于新发表的论文。我们对从ACM数字图书馆抓取的真实数据集进行了广泛的评估。结果表明,我们的方法优于其他方法。

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