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arxiv: 1605.07025 · v3 · pith:PTQWQRTYnew · submitted 2016-05-23 · 📊 stat.ML · cs.IR· cs.LG

Collaborative Filtering with Side Information: a Gaussian Process Perspective

classification 📊 stat.ML cs.IRcs.LG
keywords gaussianinformationmodelprocesssidecollaborativefactorisationfiltering
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We tackle the problem of collaborative filtering (CF) with side information, through the lens of Gaussian Process (GP) regression. Driven by the idea of using the kernel to explicitly model user-item similarities, we formulate the GP in a way that allows the incorporation of low-rank matrix factorisation, arriving at our model, the Tucker Gaussian Process (TGP). Consequently, TGP generalises classical Bayesian matrix factorisation models, and goes beyond them to give a natural and elegant method for incorporating side information, giving enhanced predictive performance for CF problems. Moreover we show that it is a novel model for regression, especially well-suited to grid-structured data and problems where the dependence on covariates is close to being separable.

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