Embedding Ranking-Oriented Recommender System Graphs

July 31, 2020 Β· Declared Dead Β· πŸ› Expert systems with applications

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Authors Taher Hekmatfar, Saman Haratizadeh, Sama Goliaei arXiv ID 2007.16173 Category cs.IR: Information Retrieval Cross-listed cs.LG, stat.ML Citations 7 Venue Expert systems with applications Last Checked 4 months ago
Abstract
Graph-based recommender systems (GRSs) analyze the structural information in the graphical representation of data to make better recommendations, especially when the direct user-item relation data is sparse. Ranking-oriented GRSs that form a major class of recommendation systems, mostly use the graphical representation of preference (or rank) data for measuring node similarities, from which they can infer a recommendation list using a neighborhood-based mechanism. In this paper, we propose PGRec, a novel graph-based ranking-oriented recommendation framework. PGRec models the preferences of the users over items, by a novel graph structure called PrefGraph. This graph is then exploited by an improved embedding approach, taking advantage of both factorization and deep learning methods, to extract vectors representing users, items, and preferences. The resulting embedding are then used for predicting users' unknown pairwise preferences from which the final recommendation lists are inferred. We have evaluated the performance of the proposed method against the state of the art model-based and neighborhood-based recommendation methods, and our experiments show that PGRec outperforms the baseline algorithms up to 3.2% in terms of NDCG@10 in different MovieLens datasets.
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