원문정보
초록
영어
With the tremendous amount of research publications online, finding relevant ones for a particular research topic can be an overwhelming task. As a solution, papers recommender systems have been proposed to help researchers find their interested papers or related papers to their fields. Most of existing papers recommendation approaches are based on paper collections, citations and user profile which is not always available (not all users are registered with their profiles). The existing approaches assume that users have already published papers and registered in their systems. Consequently, this neglects new researcher without published papers or profiles. In this paper, we propose an academic researcher papers recommendation approach that is based on the paper’s topics and paper’s main ideas. The approach requires as input only a single research paper and extracts its topics as short queries and main ideas’ sentences as long queries which are then submitted to existing online repositories that contains research papers to retrieve similar papers for recommendation. Four query extraction and one paper recommendation methods are proposed. Conducted experiments show that the proposed method presents good improvement.
목차
1. Introduction
2. Related Works
2.1. Paper’s Topics Extraction
2.2. Research Paper Recommendation
3. Academic Research Papers Recommendation for Non-profiled Users
3.1. Candidate Queries Rxtraction
3.2. Selecting Final Queries or Queries Weighting
3.3 Papers recommendation
4. Evaluation of the proposed method
4.1 Topics Extraction Evaluation
4.2. Paper Recommendation Evaluation
5. Conclusion
References
