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Message Passing Stein Variational Gradient Descent

机译:消息传递Stein变分梯度下降

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Stein variational gradient descent (SVGD) is a recently proposed particle-based Bayesian inference method, which has attracted a lot of interest due to its remarkable approximation ability and particle efficiency compared to traditional variational inference and Markov Chain Monte Carlo methods. However, we observed that particles of SVGD tend to collapse to modes of the target distribution, and this particle degeneracy phenomenon becomes more severe with higher dimensions. Our theoretical analysis finds out that there exists a negative correlation between the dimensionality and the repulsive force of SVGD which should be blamed for this phenomenon. We propose Message Passing SVGD (MP-SVGD) to solve this problem. By leveraging the conditional independence structure of probabilistic graphical models (PGMs), MP-SVGD converts the original high-dimensional global inference problem into a set of local ones over the Markov blanket with lower dimensions. Experimental results show its advantages of preventing vanishing repulsive force in high-dimensional space over SVGD, and its particle efficiency and approximation flexibility over other inference methods on graphical models.
机译:Stein变分梯度下降法(SVGD)是最近提出的基于粒子的贝叶斯推理方法,与传统的变分推理和Markov Chain Monte Carlo方法相比,它具有出色的逼近能力和粒子效率,因此引起了广泛的关注。但是,我们观察到SVGD粒子倾向于塌陷到目标分布的模式,并且随着尺寸的增大,这种粒子简并现象变得更加严重。我们的理论分析发现,SVGD的尺寸和排斥力之间存在负相关,应归因于此现象。我们提出了消息传递SVGD(MP-SVGD)来解决此问题。通过利用概率图形模型(PGM)的条件独立性结构,MP-SVGD将原始的高维全局推断问题转换为较小维数的Markov覆盖上的一组局部问题。实验结果表明,与SVGD相比,它在防止高维空间中的排斥力消失方面具有优势,与图形模型上的其他推理方法相比,它的粒子效率和逼近灵活性也具有优势。

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