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.
翻译:潜伏力模型是一个高斯进程,具有由差异操作员启发的共变函数。这种共变函数是通过在绿色与差异操作员相关的功能和与潜伏函数相关的共变函数之间进行组合而获得的。在典型的潜伏力模型的形成过程中,共变函数通过解决双重组合而获得分析,从而产生不同类型错误函数的数值解决方案的表达方式。因此,共变矩阵计算费用相当昂贵,因为它需要评估一个或多个错误函数。在本文件中,我们使用随机的Fourier特性来接近这些双重组合的解决方案,为这种共变函数获取更简单的分析表达方式。我们用普通差异操作员来显示实验结果,并提供扩展,为共变多个高斯进程建立通用内核函数。