Title | Recommending academic papers via users' reading purposes |
Authors | Jiang, Yichen Jia, Aixia Feng, Yansong Zhao, Dongyan |
Affiliation | Peking University, Beijing, China |
Issue Date | 2012 |
Citation | 6th ACM Conference on Recommender Systems, RecSys 2012.Dublin, Ireland. |
Abstract | The past decades have witnessed the rapid development of academic research, which results in a growing number of scholarly papers. As a result, paper recommender systems have been proposed to help researchers find their interested papers. Most previous studies in paper recommendations mainly concentrate on paper-paper or user-paper similar- ities without taking users' reading purposes into account. It is common that different users may prefer to different aspects of a paper, e.g., the focused problem/task or the proposed solution. In this paper, we propose to satisfy user-specific reading purposes by recommending the most problem-related papers or solution-related papers to users separately. For a target paper, we use the paper citation graph to generate a set of potential relevant papers. Once getting the candidate set, we calculate the problem-based similarities and solution-based similarities between candi- dates and the target paper through a concept based topic model, respectively. We evaluate our models on a real academic paper dataset and our experiments show that our approach outperforms a traditional similarity based model and can provide highly relevant paper recommendations according to different reading purposes for researchers. Copyright ? 2012 by the Association for Computing Machinery, Inc. (ACM). |
URI | http://hdl.handle.net/20.500.11897/302695 |
ISSN | 9781450312707 |
DOI | 10.1145/2365952.2366004 |
Indexed | EI |
Appears in Collections: | 待认领 |