Efficiently accessing the information contained in non-linear and high dimensional probability distributions remains a core challenge in modern statistics. Traditionally, estimators that go beyond point estimates are either categorized as Variational Inference (VI) or Markov-Chain Monte-Carlo (MCMC) techniques. While MCMC methods that utilize the geometric properties of continuous probability distributions to increase their efficiency have been proposed, VI methods rarely use the geometry. This work aims to fill this gap and proposes geometric Variational Inference (geoVI), a method based on Riemannian geometry and the Fisher information metric. It is used to construct a coordinate transformation that relates the Riemannian manifold associated with the metric to Euclidean space. The distribution, expressed in the coordinate system induced by the transformation, takes a particularly simple form that allows for an accurate variational approximation by a normal distribution. Furthermore, the algorithmic structure allows for an efficient implementation of geoVI which is demonstrated on multiple examples, ranging from low-dimensional illustrative ones to non-linear, hierarchical Bayesian inverse problems in thousands of dimensions.
翻译:有效获取非线性和高维概率分布所含信息仍然是现代统计中的一项核心挑战。 传统上,超过点估计值的估算值要么被归类为变相推断(VI)或Markov-Chain Monte-Carlo(MCMC)技术。虽然提出了利用连续概率分布几何特性来提高其效率的MC方法,但六种方法很少使用几何法。这项工作旨在填补这一差距,并提出几何变相推断值(GeoVI),这是基于里曼几何和渔业信息测量法的一种方法。它用来构建一个与欧洲大陆空间的参数相关的里曼多元坐标转换。在由变换引出的协调系统中表达的分布特别简单,能够通过正常分布实现准确的差差差近。此外,算法结构允许高效地实施从低维演示到非线、分级波段的数千维度问题等多个实例所展示的地球六。