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Stein Variational Gradient Descent With Matrix-Valued Kernels

About

Stein variational gradient descent (SVGD) is a particle-based inference algorithm that leverages gradient information for efficient approximate inference. In this work, we enhance SVGD by leveraging preconditioning matrices, such as the Hessian and Fisher information matrix, to incorporate geometric information into SVGD updates. We achieve this by presenting a generalization of SVGD that replaces the scalar-valued kernels in vanilla SVGD with more general matrix-valued kernels. This yields a significant extension of SVGD, and more importantly, allows us to flexibly incorporate various preconditioning matrices to accelerate the exploration in the probability landscape. Empirical results show that our method outperforms vanilla SVGD and a variety of baseline approaches over a range of real-world Bayesian inference tasks.

Dilin Wang, Ziyang Tang, Chandrajit Bajaj, Qiang Liu• 2019

Related benchmarks

TaskDatasetResultRank
Bayesian Neural NetworksUCI Boston (test)
RMSE2.775
16
Bayesian Neural Network RegressionWINE (test)
RMSE0.604
12
Bayesian Neural Network RegressionCombined (test)
RMSE4.07
12
Bayesian Neural Network Regressionkin8nm (test)
RMSE0.095
12
Bayesian Neural Network Regressionconcrete (test)
RMSE4.888
12
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