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Kim, Kwang In
Machine Learning and Vision Lab.
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Sparse multiscale Gaussian process regression

Author(s)
Walder, ChristianKim, Kwang InSchölkopf, Bernhard
Issued Date
2008-07-05
DOI
10.1145/1390156.1390296
URI
https://scholarworks.unist.ac.kr/handle/201301/32414
Fulltext
https://dl.acm.org/citation.cfm?doid=1390156.1390296
Citation
International Conference on Machine Learning, pp.1112 - 1119
Abstract
Most existing sparse Gaussian process (g.p.) models seek computational advantages by basing their computations on a set of m basis functions that are the covariance function of the g.p. with one of its two inputs fixed. We generalise this for the case of Gaussian covariance function, by basing our computations on m Gaussian basis functions with arbitrary diagonal covariance matrices (or length scales). For a fixed number of basis functions and any given criteria, this additional flexibility permits approximations no worse and typically better than was previously possible. We perform gradient based optimisation of the marginal likelihood, which costs 0(m2n) time where n is the number of data points, and compare the method to various other sparse g.p. methods. Although we focus on g.p. regression, the central idea is applicable to all kernel based algorithms, and we also provide some results for the support vector machine (s.v.m.) and kernel ridge regression (k.r.r.). Our approach outperforms the other methods, particularly for the case of very few basis functions, i.e. a very high sparsity ratio. Copyright 2008 by the author(s)/owner(s).
Publisher
25th International Conference on Machine Learning

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