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Particle-based energetic variational inference

机译:基于粒子的能量变分推理

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We introduce a new variational inference (VI) framework, called energetic variational inference (EVI). It minimizes the VI objective function based on a prescribed energy-dissipation law. Using the EVI framework, we can derive many existing particle-based variational inference (ParVI) methods, including the popular Stein variational gradient descent (SVGD). More importantly, many new ParVI schemes can be created under this framework. For illustration, we propose a new particle-based EVI scheme, which performs the particle-based approximation of the density first and then uses the approximated density in the variational procedure, or "Approximation-then-Variation" for short. Thanks to this order of approximation and variation, the new scheme can maintain the variational structure at the particle level, and can significantly decrease the KL-divergence in each iteration. Numerical experiments show the proposed method outperforms some existing ParVI methods in terms of fidelity to the target distribution.
机译:我们介绍了一个新的变分推论(VI)框架,称为能量变分推理(EVI)。它基于规定的能量消散法最大限度地减少了VI目标函数。使用EVI框架,我们可以推导出许多现有的基于粒子的变分推理(PARVI)方法,包括流行的Stein变分梯度下降(SVGD)。更重要的是,可以在此框架下创建许多新的Parvi方案。为了插图,我们提出了一种新的基于粒子的EVI方案,其首先使用粒子的近似,然后使用变分过程中的近似密度,或者短的“近似 - 变化”。由于这种近似和变化的顺序,新方案可以在粒子水平保持变分结构,并且可以显着降低每次迭代中的KL发散。数值实验表明,所提出的方法在对目标分布的保真度方面优于一些现有的PARVI方法。

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