Particle based optimization algorithms have recently been developed as sampling methods that iteratively update a set of particles to approximate a target distribution. In particular Stein variational gradient descent has gained attention in the approximate inference literature for its flexibility and accuracy. We empirically explore the ability of this method to sample from multi-modal distributions and focus on two important issues: (i) the inability of the particles to escape from local modes and (ii) the inefficacy in reproducing the density of the different regions. We propose an annealing schedule to solve these issues and show, through various experiments, how this simple solution leads to significant improvements in mode coverage, without invalidating any theoretical properties of the original algorithm.
翻译:最近开发了以粒子为基础的优化算法,作为迭接更新一组粒子以接近目标分布的抽样方法。特别是斯坦因梯度梯度下降的近似推论文献已注意到其灵活性和准确性。我们实证地探索了这一方法从多模式分布中取样的能力,并侧重于两个重要问题:(一) 粒子无法逃离当地模式,(二) 复制不同区域密度的无效性。我们提议了一种消除这些问题的时间表,并通过各种实验表明这一简单解决办法如何导致模式覆盖的显著改进,同时不否定原始算法的任何理论特性。