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Stochastic Particle-Optimization Sampling and the Non-Asymptotic Convergence Theory

Publication ,  Conference
Zhang, J; Zhang, R; Carin, L; Chen, C
Published in: Proceedings of Machine Learning Research
January 1, 2020

Particle-optimization-based sampling (POS) is a recently developed effective sampling technique that interactively updates a set of particles to approximate a target distribution. A representative algorithm is the Stein variational gradient descent (SVGD). We prove, under certain conditions, SVGD experiences a theoretical pitfall, i.e., particles tend to collapse. As a remedy, we generalize POS to a stochastic setting by injecting random noise into particle updates, thus termed stochastic particle-optimization sampling (SPOS). Notably, for the first time, we develop nonasymptotic convergence theory for the SPOS framework (related to SVGD), characterizing algorithm convergence in terms of the 1-Wasserstein distance w.r.t. the numbers of particles and iterations. Somewhat surprisingly, with the same number of updates (not too large) for each particle, our theory suggests adopting more particles does not necessarily lead to a better approximation of a target distribution, due to limited computational budget and numerical errors. This phenomenon is also observed in SVGD and verified via a synthetic experiment. Extensive experimental results verify our theory and demonstrate the effectiveness of our proposed framework.

Duke Scholars

Published In

Proceedings of Machine Learning Research

EISSN

2640-3498

Publication Date

January 1, 2020

Volume

108

Start / End Page

1877 / 1887
 

Citation

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Zhang, J., Zhang, R., Carin, L., & Chen, C. (2020). Stochastic Particle-Optimization Sampling and the Non-Asymptotic Convergence Theory. In Proceedings of Machine Learning Research (Vol. 108, pp. 1877–1887).
Zhang, J., R. Zhang, L. Carin, and C. Chen. “Stochastic Particle-Optimization Sampling and the Non-Asymptotic Convergence Theory.” In Proceedings of Machine Learning Research, 108:1877–87, 2020.
Zhang J, Zhang R, Carin L, Chen C. Stochastic Particle-Optimization Sampling and the Non-Asymptotic Convergence Theory. In: Proceedings of Machine Learning Research. 2020. p. 1877–87.
Zhang, J., et al. “Stochastic Particle-Optimization Sampling and the Non-Asymptotic Convergence Theory.” Proceedings of Machine Learning Research, vol. 108, 2020, pp. 1877–87.
Zhang J, Zhang R, Carin L, Chen C. Stochastic Particle-Optimization Sampling and the Non-Asymptotic Convergence Theory. Proceedings of Machine Learning Research. 2020. p. 1877–1887.

Published In

Proceedings of Machine Learning Research

EISSN

2640-3498

Publication Date

January 1, 2020

Volume

108

Start / End Page

1877 / 1887