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TAPRec: time-aware paper recommendation via the modeling of researchers’ dynamic preferences

Author

Listed:
  • Chi Jiang

    (University of Electronic Science and Technology of China)

  • Xiao Ma

    (Zhongnan University of Economics and Law)

  • Jiangfeng Zeng

    (Central China Normal University)

  • Yin Zhang

    (University of Electronic Science and Technology of China)

  • Tingting Yang

    (Zhongnan University of Economics and Law)

  • Qiumiao Deng

    (Zhongnan University of Economics and Law)

Abstract

With the number of scientific papers growing exponentially, recommending relevant papers for researchers has become an important and attractive research area. Existing paper recommendation methods pay more attention to the textual similarity or the citation relationships between papers. However, they generally ignore the researcher’s dynamic research interests which affect the recommendation performance to a large extent. Additionally, cold start is also a serious problem in existing paper recommender systems since many researchers may have few publications, which makes the recommender systems fail to learn their preferences. In order to solve these issues, in this paper, we propose a Time-Aware Paper Recommendation (TAPRec) model, which learns researchers’ dynamic preferences by encoding the long-term and short-term research interests from their historical publications. The Self-Attention method is utilized to aggregate researchers’ consistent long-term research interests, while the short-term research focuses are implemented with Temporal Convolutional Networks (TCN). In addition, for researchers with few academic achievements, we combine their co-authors’ dynamic preferences to solve the cold-start problem. Experiments with the DBLP dataset indicate that the proposed time-aware model performs better in the recommendation accuracy compared to the state-of-the-arts methods.

Suggested Citation

  • Chi Jiang & Xiao Ma & Jiangfeng Zeng & Yin Zhang & Tingting Yang & Qiumiao Deng, 2023. "TAPRec: time-aware paper recommendation via the modeling of researchers’ dynamic preferences," Scientometrics, Springer;Akadémiai Kiadó, vol. 128(6), pages 3453-3471, June.
  • Handle: RePEc:spr:scient:v:128:y:2023:i:6:d:10.1007_s11192-023-04731-4
    DOI: 10.1007/s11192-023-04731-4
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    References listed on IDEAS

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    1. Hanwen Liu & Huaizhen Kou & Chao Yan & Lianyong Qi, 2020. "Keywords-Driven and Popularity-Aware Paper Recommendation Based on Undirected Paper Citation Graph," Complexity, Hindawi, vol. 2020, pages 1-15, April.
    2. Lu Huang & Xiang Chen & Yi Zhang & Yihe Zhu & Suyi Li & Xingxing Ni, 2021. "Dynamic network analytics for recommending scientific collaborators," Scientometrics, Springer;Akadémiai Kiadó, vol. 126(11), pages 8789-8814, November.
    3. Esra Gündoğan & Mehmet Kaya, 2022. "A novel hybrid paper recommendation system using deep learning," Scientometrics, Springer;Akadémiai Kiadó, vol. 127(7), pages 3837-3855, July.
    4. Shutian Ma & Heng Zhang & Chengzhi Zhang & Xiaozhong Liu, 2021. "Chronological citation recommendation with time preference," Scientometrics, Springer;Akadémiai Kiadó, vol. 126(4), pages 2991-3010, April.
    5. Zafar Ali & Guilin Qi & Pavlos Kefalas & Shah Khusro & Inayat Khan & Khan Muhammad, 2022. "SPR-SMN: scientific paper recommendation employing SPECTER with memory network," Scientometrics, Springer;Akadémiai Kiadó, vol. 127(11), pages 6763-6785, November.
    Full references (including those not matched with items on IDEAS)

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