Context-aware movie recommendation based on signal processing and machine learning

CAMRa '11: Proceedings of the 2nd Challenge on Context-Aware Movie Recommendation(2011)

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摘要
Most of the existing recommendation engines do not take into consideration contextual information for suggesting interesting items to users. Features such as time, location, or weather, may affect the user preferences for a particular item. In this paper, we propose two different context-aware approaches for the movie recommendation task. The first is an hybrid recommender that assesses available contextual factors related to time in order to increase the performance of traditional CF approaches. The second approach aims at identifying users in a household that submitted a given rating. This latter approach is based on machine learning techniques, namely, neural networks and majority voting classifiers. The effectiveness of both the approaches has been experimentally validated using several evaluation metrics and a large dataset.
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关键词
evaluation metrics,consideration contextual information,existing recommendation engine,traditional cf approach,context-aware movie recommendation,hybrid recommender,signal processing,different context-aware approach,movie recommendation task,available contextual factor,latter approach,interesting item,machine learning,neural network,majority voting,recommender system,recommender systems,collaborative filtering
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