Article ID Journal Published Year Pages File Type
4641929 Journal of Computational and Applied Mathematics 2008 17 Pages PDF
Abstract

Maximum likelihood estimation (MLE) of hyperparameters in Gaussian process regression as well as other computational models usually and frequently requires the evaluation of the logarithm of the determinant of a positive-definite matrix (denoted by C   hereafter). In general, the exact computation of logdetC is of O(N3)O(N3) operations where N   is the matrix dimension. The approximation of logdetC could be developed with O(N2)O(N2) operations based on power-series expansion and randomized trace estimator. In this paper, the accuracy and effectiveness of using uniformly distributed seeds for logdetC approximation are investigated. The research shows that uniform-seed based approximation is an equally good alternative to Gaussian-seed based approximation, having slightly better approximation accuracy and smaller variance. Gaussian process regression examples also substantiate the effectiveness of such a uniform-seed based loglog-detdet approximation scheme.

Related Topics
Physical Sciences and Engineering Mathematics Applied Mathematics
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