Citation recommendation employing heterogeneous bibliographic network embedding

被引:0
作者
Zafar Ali
Guilin Qi
Khan Muhammad
Siddhartha Bhattacharyya
Irfan Ullah
Waheed Abro
机构
[1] School of Computer Science and Engineering, Visual Analytics for Knowledge Laboratory (VIS2KNOW Lab), Department of Software
[2] Southeast University,Department of Computer Science
[3] Sejong University,undefined
[4] Rajnagar Mahavidyalaya,undefined
[5] Shaheed Benazir Bhutto University,undefined
来源
Neural Computing and Applications | 2022年 / 34卷
关键词
Recommender systems; Citation recommendations; Network embedding; Deep learning; Network sparsity;
D O I
暂无
中图分类号
学科分类号
摘要
The massive number of research articles on the Web makes it troublesome for researchers to identify related works that could meet their preferences and interests. Consequently, various network representation learning-based models have been proposed to produce citation recommendations. Nevertheless, these models do not exploit semantic relations and contextual information between the objects of bibliographic papers’ networks, which can result in inadequate citation recommendations. Moreover, existing citation recommendation methods face problems such as lack of personalization, cold-start, and network sparsity. To mitigate such problems and produce individualized citation recommendations, we propose a heterogeneous network embedding model that jointly learns node representations by exploiting semantics corresponding to the author, time, context, field of study, citations, and topics. Compared to baseline models, the results produced by the proposed model over the DBLP datasets prove 10% and 12% improvement on mean average precision (MAP) and normalized discounted cumulative gain (nDCG@10) metrics, respectively. Also, the effectiveness of our model is analyzed on the cold-start papers and network sparsity problems, where it gains 12% and 9% better MAP and recall@10 scores, respectively.
引用
收藏
页码:10229 / 10242
页数:13
相关论文
共 55 条
  • [1] Kunaver M(2017)Diversity in recommender systems-a survey Knowl-Based Syst 123 154-162
  • [2] Požrl T(2015)Personalized news recommendation based on articles chain building Neural Comput Appl 27 1263-1272
  • [3] Gu W(2018)Global citation recommendation using knowledge graphs J Intell Fuzzy Syst 34 3089-3100
  • [4] Dong S(2015)Relational collaborative topic regression for recommender systems IEEE Trans Knowl Data Eng 27 1343-1355
  • [5] Chen M(2019)Bibliographic network representation based personalized citation recommendation IEEE Access 7 457-467
  • [6] Ayala-Gómez F(2018)A lstm based model for personalized context-aware citation recommendation IEEE Access 6 59618-59627
  • [7] Daróczy B(2018)A three-layered mutually reinforced model for personalized citation recommendation IEEE Tran Neural Netw Learn Syst 29 6026-6037
  • [8] Benczúr A(2020)Hasvrec: A modularized hierarchical attention-based scholarly venue recommender system Knowl-Based Syst 204 106181-11
  • [9] Mathioudakis M(2016)Science concierge: A fast content-based recommendation system for scientific publications PLoS ONE 11 1-113
  • [10] Gionis A(2020)Deep learning in citation recommendation models survey Expert Syst Appl 162 113790-852