2020
DOI: 10.48550/arxiv.2008.09848
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Fast Approximate Multi-output Gaussian Processes

Abstract: Gaussian processes regression models are an appealing machine learning method as they learn expressive non-linear models from exemplar data with minimal parameter tuning and estimate both the mean and covariance of unseen points. However, exponential computational complexity growth with the number of training samples has been a long standing challenge. During training, one has to compute and invert an N × N kernel matrix at every iteration. Regression requires computation of an m × N kernel where N and m are t… Show more

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