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Stochastic Optimization on Continuous Domains With Finite-Time Guarantees by Markov Chain Monte Carlo Methods

机译:有限时间保证的连续域随机优化的马尔可夫链蒙特卡洛方法

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摘要

We introduce bounds on the finite-time performance of Markov chain Monte Carlo (MCMC) algorithms in solving global stochastic optimization problems defined over continuous domains. It is shown that MCMC algorithms with finite-time guarantees can be developed with a proper choice of the target distribution and by studying their convergence in total variation norm. This work is inspired by the concept of finite-time learning with known accuracy and confidence developed in statistical learning theory.
机译:在解决连续域上定义的全局随机优化问题时,我们介绍了马尔可夫链蒙特卡洛(MCMC)算法的有限时间性能范围。结果表明,通过适当选择目标分布并研究它们在总变分范数中的收敛性,可以开发出具有有限时间保证的MCMC算法。这项工作的灵感来自统计学习理论中发展的具有已知准确性和置信度的有限时间学习概念。

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