Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4641929 | Journal of Computational and Applied Mathematics | 2008 | 17 Pages |
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.