Tag-Aware Document Representation for Research Paper Recommendation
Hebatallah A. Mohamed, Giuseppe Sansonetti, Alessandro Micarelli

TL;DR
This paper introduces a hybrid research paper recommendation method that uses social tags and deep semantic representations to improve accuracy in sparse rating scenarios, outperforming traditional bag-of-words approaches.
Contribution
It presents a novel tag-aware deep semantic model for research paper recommendation that effectively handles sparse rating data.
Findings
The proposed model outperforms traditional methods on CiteULike dataset.
Deep semantic representations improve recommendation accuracy.
Effective in scenarios with very sparse rating data.
Abstract
Finding online research papers relevant to one's interests is very challenging due to the increasing number of publications. Therefore, personalized research paper recommendation has become a significant and timely research topic. Collaborative filtering is a successful recommendation approach, which exploits the ratings given to items by users as a source of information for learning to make accurate recommendations. However, the ratings are often very sparse as in the research paper domain, due to the huge number of publications growing every year. Therefore, more attention has been drawn to hybrid methods that consider both ratings and content information. Nevertheless, most of the hybrid recommendation approaches that are based on text embedding have utilized bag-of-words techniques, which ignore word order and semantic meaning. In this paper, we propose a hybrid approach that…
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Taxonomy
TopicsRecommender Systems and Techniques · Expert finding and Q&A systems · Topic Modeling
