超参数
高斯过程
贝叶斯优化
克里金
参数化复杂度
计算机科学
协方差
回归
算法
高斯分布
贝叶斯概率
数学
人工智能
模式识别(心理学)
机器学习
统计
物理
量子力学
作者
Edward Snelson,Zoubin Ghahramani
出处
期刊:Neural Information Processing Systems
日期:2005-12-05
卷期号:18: 1257-1264
被引量:1389
摘要
We present a new Gaussian process (GP) regression model whose co-variance is parameterized by the the locations of M pseudo-input points, which we learn by a gradient based optimization. We take M ≪ N, where N is the number of real data points, and hence obtain a sparse regression method which has O(M2N) training cost and O(M2) prediction cost per test case. We also find hyperparameters of the covariance function in the same joint optimization. The method can be viewed as a Bayesian regression model with particular input dependent noise. The method turns out to be closely related to several other sparse GP approaches, and we discuss the relation in detail. We finally demonstrate its performance on some large data sets, and make a direct comparison to other sparse GP methods. We show that our method can match full GP performance with small M, i.e. very sparse solutions, and it significantly outperforms other approaches in this regime.
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