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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >Projected Wasserstein Gradient Descent for High-Dimensional Bayesian Inference
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Projected Wasserstein Gradient Descent for High-Dimensional Bayesian Inference

机译:用于高维贝叶斯推理的投影 Wasserstein 梯度下降

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We propose a projected Wasserstein gradient descent method (pWGD) for high-dimensional Bayesian inference problems. The underlying density function of a particle system of Wasserstein gradient descent (WGD) is approximated by kernel density estimation (KDE), which faces the long-standing curse of dimensionality. We overcome this challenge by exploiting the intrinsic low-rank structure in the difference between the posterior and prior distributions. The parameters are projected into a low-dimensional subspace to alleviate the approximation error of KDE in high dimensions. We formulate a projected Wasserstein gradient flow and analyze its convergence property under mild assumptions. Several numerical experiments illustrate the accuracy, convergence, and complexity scalability of pWGD with respect to parameter dimension, sample size, and processor cores.
机译:我们建议预计瓦瑟斯坦梯度下降法(pWGD)高维贝叶斯推理问题。密度函数的粒子系统瓦瑟斯坦梯度下降(WGD)近似的核密度估计(KDE),面临着长期的诅咒维度。利用低秩结构的内在后和之前的区别分布。一个低维子空间来缓解KDE的近似误差高维度。制定预计瓦瑟斯坦梯度流并分析其在温和的收敛性能假设。说明了精度、收敛性和可伸缩性pWGD关于复杂性参数维度、样本容量和处理器内核。

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