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A basis function approach to Bayesian inference in diffusion processes

机译:扩散过程中贝叶斯推断的基础函数方法

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In this paper, we present a framework for Bayesian inference in continuous-time diffusion processes. The new method is directly related to the recently proposed variational Gaussian Process approximation (VGPA) approach to Bayesian smoothing of partially observed diffusions. By adopting a basis function expansion (BF-VGPA), both the time-dependent control parameters of the approximate GP process and its moment equations are projected onto a lower-dimensional subspace. This allows us both to reduce the computational complexity and to eliminate the time discretisation used in the previous algorithm. The new algorithm is tested on an Ornstein- Uhlenbeck process. Our preliminary results show that BFVGPA algorithm provides a reasonably accurate state estimation using a small number of basis functions.
机译:在本文中,我们在连续时间扩散过程中提出了贝叶斯推断的框架。新方法与最近提出的变分高斯工艺近似(VGPA)方法直接相关(VGPA)对部分观察到的扩散的平滑。通过采用基函数扩展(BF-VGPA),将近似GP过程及其时刻方程的时间相关的控制参数投影到低维子空间上。这使我们既可以降低计算复杂性,并消除先前算法中使用的时间分离子。在Ornstein-Uhlenbeck进程上测试了新算法。我们的初步结果表明,BFVGPA算法使用少量基础函数提供了合理准确的状态估计。

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