3.8 Proceedings Paper

Multiscale Invertible Generative Networks for High-Dimensional Bayesian Inference

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Publisher

JMLR-JOURNAL MACHINE LEARNING RESEARCH

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  1. NSF [DMS-1912654, DMS-1907977]

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MsIGN leverages multiscale structure to solve high-dimensional Bayesian inference, minimizing Jeffreys divergence through multistage training to avoid mode dropping, and demonstrating superior performance in high-dimensional scenarios.
We propose a Multiscale Invertible Generative Network (MsIGN) and associated training algorithm that leverages multiscale structure to solve high-dimensional Bayesian inference. To address the curse of dimensionality, MsIGN exploits the low-dimensional nature of the posterior, and generates samples from coarse to fine scale (low to high dimension) by iteratively upsampling and refining samples. MsIGN is trained in a multistage manner to minimize the Jeffreys divergence, which avoids mode dropping in high-dimensional cases. On two high-dimensional Bayesian inverse problems, we show superior performance of MsIGN over previous approaches in posterior approximation and multiple mode capture. On the natural image synthesis task, MsIGN achieves superior performance in bits-per-dimension over baseline models and yields great interpret-ability of its neurons in intermediate layers.

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