Multivariate Gaussian and Student-t process regression for multi-output prediction

被引:0
作者
Zexun Chen
Bo Wang
Alexander N. Gorban
机构
[1] University of Leicester,Department of Mathematics
[2] University of Exeter,College of Engineering, Mathematics and Physical Sciences
来源
Neural Computing and Applications | 2020年 / 32卷
关键词
Multivariate Gaussian process; Multivariate Student-; process; Gaussian process regression; Student-; process regression; Multi-output prediction; Stock investment strategy; Industrial sector; Time series prediction;
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中图分类号
学科分类号
摘要
Gaussian process model for vector-valued function has been shown to be useful for multi-output prediction. The existing method for this model is to reformulate the matrix-variate Gaussian distribution as a multivariate normal distribution. Although it is effective in many cases, reformulation is not always workable and is difficult to apply to other distributions because not all matrix-variate distributions can be transformed to respective multivariate distributions, such as the case for matrix-variate Student-t distribution. In this paper, we propose a unified framework which is used not only to introduce a novel multivariate Student-t process regression model (MV-TPR) for multi-output prediction, but also to reformulate the multivariate Gaussian process regression (MV-GPR) that overcomes some limitations of the existing methods. Both MV-GPR and MV-TPR have closed-form expressions for the marginal likelihoods and predictive distributions under this unified framework and thus can adopt the same optimization approaches as used in the conventional GPR. The usefulness of the proposed methods is illustrated through several simulated and real-data examples. In particular, we verify empirically that MV-TPR has superiority for the datasets considered, including air quality prediction and bike rent prediction. At last, the proposed methods are shown to produce profitable investment strategies in the stock markets.
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页码:3005 / 3028
页数:23
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