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首页> 外文期刊>IEEE Transactions on Signal Processing >A Hamiltonian Monte Carlo Method for Non-Smooth Energy Sampling
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A Hamiltonian Monte Carlo Method for Non-Smooth Energy Sampling

机译:非光滑能量采样的哈密顿蒙特卡罗方法

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Efficient sampling from high-dimensional distributions is a challenging issue that is encountered in many large data recovery problems. In this context, sampling using Hamiltonian dynamics is one of the recent techniques that have been proposed to exploit the target distribution geometry. Such schemes have clearly been shown to be efficient for multidimensional sampling but, rather, are adapted to distributions from the exponential family with smooth energy functions. In this paper, we address the problem of using Hamiltonian dynamics to sample from probability distributions having non-differentiable energy functions such as those based on the l1 norm. Such distributions are being used intensively in sparse signal and image recovery applications. The technique studied in this paper uses a modified leapfrog transform involving a proximal step. The resulting nonsmooth Hamiltonian Monte Carlo method is tested and validated on a number of experiments. Results show its ability to accurately sample according to various multivariate target distributions. The proposed technique is illustrated on synthetic examples and is applied to an image denoising problem.
机译:从高维分布进行有效采样是许多大数据恢复问题中遇到的具有挑战性的问题。在这种情况下,使用汉密尔顿动力学进行采样是已提出的利用目标分布几何形状的最新技术之一。显然已经证明了这样的方案对于多维采样是有效的,但是适用于具有平滑能量函数的指数族的分布。在本文中,我们解决了使用汉密尔顿动力学从具有不可微能量函数(例如基于l1范数的那些)的概率分布中进行采样的问题。这种分布正在稀疏信号和图像恢复应用中大量使用。本文研究的技术使用了一个包含近端步的改进的越级变换。由此产生的非光滑哈密顿量蒙特卡罗方法已通过大量实验进行了测试和验证。结果表明,它具有根据各种多元目标分布准确采样的能力。在合成示例上说明了所提出的技术,并将其应用于图像去噪问题。

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