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Fast Kernel Approximations for Latent Force Models and Convolved Multiple-Output Gaussian processes

机译:潜力模型的快速内核近似和卷积多输出高斯过程

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A latent force model is a Gaussian process with a covariance function inspired by a differential operator. Such covariance function is obtained by performing convolution integrals between Green's functions associated to the differential operators, and covariance functions associated to latent functions. In the classical formulation of latent force models, the covariance functions are obtained analytically by solving a double integral, leading to expressions that involve numerical solutions of different types of error functions. In consequence, the covariance matrix calculation is considerably expensive, because it requires the evaluation of one or more of these error functions. In this paper, we use random Fourier features to approximate the solution of these double integrals obtaining simpler analytical expressions for such covariance functions. We show experimental results using ordinary differential operators and provide an extension to build general kernel functions for convolved multiple output Gaussian processes.
机译:潜力模型是具有由差分运算符启发的协方差函数的高斯过程。通过在与差分运算符相关联的绿色函数之间执行卷积积分以及与潜在函数相关联的协方差函数来获得这种协方差函数。在潜在力模型的经典制剂中,通过求解双积分来分析协方差,导致涉及不同类型误差函数的数值解的表达式。结果,协方差矩阵计算大得多,因为它需要评估一个或多个这些误差函数。在本文中,我们使用随机傅里叶特征来近似于这些双积分的解决方案获得用于这种协方差函数的更简单的分析表达式。我们显示使用普通差分运算符的实验结果,并提供扩展,为构建用于复杂的多个输出高斯过程的通用内核功能。

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