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Non-Linear Matrix Factorization with Gaussian Processes






A popular approach to collaborative filtering is matrix factorization. In this paper we consider the "probabilistic matrix factorization" and by taking a latent variable model perspective we show its equivalence to Bayesian PCA. This inspires us to consider probabilistic PCA and its non-linear extension, the Gaussian process latent variable model (GP-LVM) as an approach for probabilistic non-linear matrix factorization. We apply approach to benchmark movie recommender data sets. The results show better than previous state-of-the-art performance.
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Attribution: The Open Education Consortium
http://www.ocwconsortium.org/courses/view/7c2b6256a6fd9b67ee2e0b55b927e48b/
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