Gaussian processes occupy one of the leading places in modern statistics and probability theory due to their importance and a wealth of strong results. The common use of Gaussian processes is in connection with problems related to estimation, detection, and many statistical or machine learning models. With the fast development of Gaussian process applications, it is necessary to consolidate the fundamentals of vector-valued stochastic processes, in particular multivariate Gaussian processes, which is the essential theory for many applied problems with multiple correlated responses. In this paper, we propose a precise definition of multivariate Gaussian processes based on Gaussian measures on vector-valued function spaces, and provide an existence proof. In addition, several fundamental properties of multivariate Gaussian processes, such as strict stationarity and independence, are introduced. We further derive multivariate Brownian motion including It\^o lemma as a special case of a multivariate Gaussian process, and present a brief introduction to multivariate Gaussian process regression as a useful statistical learning method for multi-output prediction problems.
翻译:Gausian 进程因其重要性和巨大成果而成为现代统计和概率理论的主导地位之一。 Gaussian 进程的共同使用涉及与估计、检测和许多统计或机器学习模型有关的问题。随着Gaussian 进程应用程序的快速开发,有必要整合矢量价值的随机过程的基本原理,特别是多变量高斯进程,这是多个相关响应的许多应用问题的基本理论。在本文中,我们提出了一个基于高斯测量值功能空间的多变量高斯进程精确定义,并提供存在的证据。此外,还引入了多种变量高斯进程的若干基本特性,如严格的静态性和独立性。我们进一步从多变量的Gaussian 运动中获取多种变量,包括It ⁇ o lemmma,作为多变量高斯进程的特殊实例,并简要介绍多变量高斯进程回归,作为多输出预测问题的有用的统计学习方法。