Publication | Closed Access
CLiMF
309
Citations
34
References
2012
Year
Unknown Venue
Ranking AlgorithmBinary Relevance DataMachine LearningInformation RetrievalData ScienceData MiningEngineeringGroup RecommendersKnowledge DiscoverySmoothed Reciprocal RankBusinessLearning To RankCold-start ProblemCollaborative FilteringText MiningSocial Network Analysis
In this paper we tackle the problem of recommendation in the scenarios with binary relevance data, when only a few (k) items are recommended to individual users. Past work on Collaborative Filtering (CF) has either not addressed the ranking problem for binary relevance datasets, or not specifically focused on improving top-k recommendations. To solve the problem we propose a new CF approach, Collaborative Less-is-More Filtering (CLiMF). In CLiMF the model parameters are learned by directly maximizing the Mean Reciprocal Rank (MRR), which is a well-known information retrieval metric for measuring the performance of top-k recommendations. We achieve linear computational complexity by introducing a lower bound of the smoothed reciprocal rank metric. Experiments on two social network datasets demonstrate the effectiveness and the scalability of CLiMF, and show that CLiMF significantly outperforms a naive baseline and two state-of-the-art CF methods.
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