We formulate both Markov chain Monte Carlo (MCMC) sampling algorithms and basic statistical physics in terms of elementary symmetries. This perspective on sampling yields derivations of well-known MCMC algorithms and a new parallel algorithm that appears to converge more quickly than current state of the art methods. The symmetry perspective also yields a parsimonious framework for statistical physics and a practical approach to constructing meaningful notions of effective temperature and energy directly from time series data. We apply these latter ideas to Anosov systems.
翻译:我们从基本对称的角度制定Markov链Monte Carlo(MCMC)采样算法和基本统计物理学,从这一角度分析众所周知的MCMC算法和新的平行算法的采样产量,这种算法似乎比目前最先进的方法更快地趋同。对称观点还产生了一个统计物理学的模糊框架和一种从时间序列数据直接构建有效温度和能量的有意义的概念的实用方法。我们将这些想法应用到阿诺索夫系统。