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Venue Topic Model-enhanced Joint Graph Modelling for Citation Recommendation in Scholarly Big Data

机译:Venue主题模型 - 增强了学术大数据中引用建议的联合图建模

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摘要

Natural language processing technologies, such as topic models, have been proven to be effective for scholarly recommendation tasks with the ability to deal with content information. Recently, venue recommendation is becoming an increasingly important research task due to the unprecedented number of publication venues. However, traditional methods focus on either the author's local network or author-venue similarity, where the multiple relationships between scholars and venues are overlooked, especially the venue-venue interaction. To solve this problem, we propose an author topic model-enhanced joint graph modeling approach that consists of venue topic modeling, venue-specific topic influence modeling, and scholar preference modeling. We first model the venue topic with Latent Dirichlet Allocation. Then, we model the venue-specific topic influence in an asymmetric and low-dimensional way by considering the topic similarity between venues, the top-influence of venues, and the top-susceptibility of venues. The top-influence characterizes venues' capacity of exerting topic influence on other venues. The top-susceptibility captures venues' propensity of being topically influenced by other venues. Extensive experiments on two real-world datasets show that our proposed joint graph modeling approach outperforms the state-of-the-art methods.
机译:已被证明是自然语言处理技术,如主题模型,以便有效地对处理内容信息的能力有效。最近,由于前所未有的出版物数量,地点推荐正在成为越来越重要的研究任务。然而,传统方法侧重于作者的本地网络或作者场地相似度,其中学者和场地之间的多种关系被忽视,特别是场地场地互动。为了解决这个问题,我们提出了一个作者主题模型增强的联合图形建模方法,包括场地主题建模,场地特定主题影响建模和学者偏好建模。我们首先使用潜在的Dirichlet分配模型。然后,我们通过考虑场地,场地的最大影响和场地的顶部易感性的主题相似,以不对称和低维的方式模拟了场地特定主题影响。最大影响表征了场馆对其他场地发挥主题影响的能力。顶部易感性捕捉场馆的局部受到其他场地的倾向。两个真实数据集的广泛实验表明,我们提出的联合图形建模方法优于最先进的方法。

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