TitleRecommending academic papers via users' reading purposes
AuthorsJiang, Yichen
Jia, Aixia
Feng, Yansong
Zhao, Dongyan
AffiliationPeking University, Beijing, China
Issue Date2012
Citation6th ACM Conference on Recommender Systems, RecSys 2012.Dublin, Ireland.
AbstractThe 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).
URIhttp://hdl.handle.net/20.500.11897/302695
ISSN9781450312707
DOI10.1145/2365952.2366004
IndexedEI
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