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Recommending scientific paper via heterogeneous knowledge embedding based attentive recurrent neural networks

机译:通过基于周度的经常性神经网络的异质知识推荐科学论文

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摘要

Tremendous academic information causes serious information overload problems while supporting scientific research. Scientific paper and citation recommendation systems have been developed to relieve this problem and work as a filter to furnish only relevant papers to researchers. Although previous studies have made comparative progress, this problem is still challenging because current paper recommendation systems rely on heterogeneous and multi-sourced features, thereby requiring a unified learning representation to cover different types and modalities of information. Additionally, the implicit influence of scholars' previous preferences of writing and citing on his/her new manuscript has not been well considered in the previous studies. Facing the issue from these two aspects, in this paper, a heterogeneous knowledge embedding-based attentive RNN model is proposed to recommend scientific paper citations. First, the preparation of features consists of two parts: (1) building a unified learning representation of structural entities and relations for recommending paper citations; and (2) defining and constructing a bibliographic network comprising five types of entities and five relations. The bibliographic network enables learning a unified representation so that all graphical entities and relations can be vectorized using TransD. To establish textual representations, the PV-DM model is utilized to generate numeric features for the title of each paper. Second, by combining structural and textual representations focusing on the ``author-text query" scenario, an attentive bidirectional RNN is constructed to recommend paper and citation based on an user's identity with a length-limited inquiry to capture the scholars' previous writing and citing preferences, thereby reducing recommendation error. Through the DBLP dataset, our experiment results show the feasibility and effectiveness of our method, both in terms of the number as well as the quality of the first few recommended items. In specific, compared with existing models, our model has improved MRR and NDCG by approximately 4.8% and 2.4%, respectively. (C) 2021 Elsevier B.V. All rights reserved.
机译:在支持科学研究时,巨大的学术信息导致严重的信息过载问题。已经制定了科学论文和引用推荐系统,以减轻这个问题,并作为过滤器,为研究人员提供相关论文的过滤器。尽管以前的研究已经取得了比较进展,但这个问题仍然具有挑战性,因为目前的论文推荐系统依赖于异构和多源特征,因此需要统一的学习表示来涵盖不同类型和信息的模式。此外,学者对他/她的新手稿上的先前写作和引用的偏好的隐含影响尚未在以前的研究中得到很好的考虑。本文面对这两个方面的问题,提出了一种异质知识嵌入的关注RNN模型,推荐科学论文。首先,特征的编制包括两部分:(1)建立结构实体的统一学习表示和建议文本引用的关系; (2)定义和构建包括五种类型的实体和五种关系的书目网络。书目网络使得能够学习统一的表示,以便可以使用TransD向上化所有图形实体和关系。为了建立文本表示,PV-DM模型用于生成每篇论文标题的数字特征。其次,通过组合专注于“作者文本查询”方案的结构和文本表示,构建了一个细心的双向RNN,以建议根据用户的身份推荐纸张和引文,以捕捉学者之前的书面的长度有限的询问。引用偏好,从而降低了推荐错误。通过DBLP数据集,我们的实验结果表明了我们的方法的可行性和有效性,无论是对数字的最重要推荐项目的质量。具体,与现有模型相比,我们的模型分别改善了MRR和NDCG,分别提高了约4.8%和2.4%。(c)2021 Elsevier BV保留所有权利。

著录项

  • 来源
    《Knowledge-Based Systems》 |2021年第5期|106744.1-106744.12|共12页
  • 作者单位

    Beijing Inst Technol Sch Comp Sci & Technol Beijing 100081 Peoples R China;

    Xi An Jiao Tong Univ Sch Comp Sci & Technol Xian 710049 Peoples R China;

    Beijing Inst Technol Sch Comp Sci & Technol Beijing 100081 Peoples R China|Chinese Acad Sci Inst Automat State Key Lab Management & Control Complex Syst Beijing 100190 Peoples R China;

    Beijing Inst Technol Sch Comp Sci & Technol Beijing 100081 Peoples R China;

    Beijing Inst Technol Sch Comp Sci & Technol Beijing 100081 Peoples R China;

    Beijing Inst Technol Sch Comp Sci & Technol Beijing 100081 Peoples R China|Beijing Inst Technol Lib Beijing 100081 Peoples R China|Univ Pittsburgh Sch Comp & Informat Pittsburgh PA 15260 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Paper recommendation; Heterogeneous knowledge; Attentive recurrent neural networks; Recommendation systems; E-learning;

    机译:纸质建议;异构知识;周度复发性神经网络;推荐系统;电子学习;

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