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Relativistic Monte Carlo

机译:相对论的蒙特卡洛

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Hamiltonian Monte Carlo (HMC) is a popular Markov chain Monte Carlo (MCMC) algorithm that generates proposals for a Metropolis-Hastings algorithm by simulating the dynamics of a Hamiltonian system. However, HMC is sensitive to large time discretizations and performs poorly if there is a mismatch between the spatial geometry of the target distribution and the scales of the momentum distribution. In particular the mass matrix of HMC is hard to tune well. In order to alleviate these problems we propose relativistic Hamiltonian Monte Carlo, a version of HMC based on relativistic dynamics that introduces a maximum velocity on particles. We also derive stochastic gradient versions of the algorithm and show that the resulting algorithms bear interesting relationships to gradient clipping, RMSprop, Adagrad and Adam, popular optimisation methods in deep learning. Based on this, we develop relativistic stochastic gradient descent by taking the zero-temperature limit of relativistic stochastic gradient Hamiltonian Monte Carlo. In experiments we show that the relativistic algorithms perform better than classical Newtonian variants and Adam.
机译:哈密​​顿蒙特卡洛(HMC)是一种流行的马尔可夫链蒙特卡洛(MCMC)算法,它通过模拟哈密顿系统的动力学来为Metropolis-Hastings算法生成建议。但是,HMC对较大的时间离散敏感,如果目标分布的空间几何形状与动量分布的比例不匹配,则HMC的性能将很差。特别是HMC的质量矩阵很难很好地调整。为了缓解这些问题,我们提出了相对论的哈密顿量蒙特卡罗,这是一种基于相对论动力学的HMC版本,它在粒子上引入了最大速度。我们还推导了该算法的随机梯度版本,并证明了所得算法与梯度削波,RMSprop,Adagrad和Adam(深度学习中常用的优化方法)之间存在有趣的关系。在此基础上,我们采用相对论随机梯度哈密顿量蒙特卡洛的零温度极限来发展相对论随机梯度下降。在实验中,我们表明相对论算法的性能优于经典的牛顿变体和亚当。

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