Publication | Open Access
LEARNING TO RANK FOR COLLABORATIVE FILTERING
27
Citations
15
References
2007
Year
Unknown Venue
EngineeringMachine LearningInformation RetrievalData ScienceData MiningRating PredictionReference Rating PredictionPreference LearningKnowledge DiscoveryLearning To RankCold-start ProblemNews RecommendationCollaborative FilteringArtsRecommendation SystemsInformation Filtering System
Up to now, most contributions to collaborative filtering rely on rating prediction to generate the recommendations. We, instead, try to correctly rank the items according to the users’ tastes. First, we define a ranking error function which takes available pairwise preferences between items into account. Then we design an effective algorithm that optimizes this error. Finally we illustrate the proposal on a standard collaborative filtering dataset. We adapted the evaluation protocol proposed by (Marlin, 2004) for rating prediction based systems to our case, where pairwise preferences are predicted instead. The preliminary results are between those of two reference rating prediction based methods. We suggest different directions to further explore our ranking based approach for collaborative filtering.
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