Spatial Processes for Recommender Systems

IJCAI(2009)

引用 31|浏览15
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摘要
Spatial processes are typically used to analyse and predict geographic data. This paper adapts such models to the prediction of a user's in- terests or item ratings in recommender sys- tems. We present the theoretical framework for a model based on Gaussian spatial pro- cesses, and discuss ecient algorithms for pa- rameter estimation. Our model was evaluated with simulated data and a real-world dataset collected by tracking visitors in a museum, and achieves a higher predictive accuracy than a non-personalised baseline. Additionally, in the real-world scenario, the model attains a higher predictive accuracy than state-of-the-art collab- orative lters.
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关键词
parameter estimation,implicit item rating,gaussian spatial process,recommender system,spatial process,museum domain,real-world dataset,higher predictive accuracy,geographic data,efficient algorithm
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