Distributed Variational Inference in Sparse Gaussian Process Regression and Latent Variable Models
Gal, Yarin, Wilk, Mark van der, Rasmussen, Carl Edward
–Neural Information Processing Systems
Gaussian processes (GPs) are a powerful tool for probabilistic inference over functions. They have been applied to both regression and non-linear dimensionality reduction, and offer desirable properties such as uncertainty estimates, robustness to over-fitting, and principled ways for tuning hyper-parameters. However the scalability of these models to big datasets remains an active topic of research. We introduce a novel re-parametrisation of variational inference for sparse GP regression and latent variable models that allows for an efficient distributed algorithm. This is done by exploiting the decoupling of the data given the inducing points to re-formulate the evidence lower bound in a Map-Reduce setting.
Neural Information Processing Systems
Feb-14-2020, 12:11:59 GMT
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