Inference with Deep Generative Priors in High Dimensions
Pandit, Parthe, Sahraee-Ardakan, Mojtaba, Rangan, Sundeep, Schniter, Philip, Fletcher, Alyson K.
Deep generative priors offer powerful models for complex-structured data, such as images, audio, and text. Using these priors in inverse problems typically requires estimating the input and/or hidden signals in a multi-layer deep neural network from observation of its output. While these approaches have been successful in practice, rigorous performance analysis is complicated by the non-convex nature of the underlying optimization problems. This paper presents a novel algorithm, Multi-Layer Vector Approximate Message Passing (ML-VAMP), for inference in multi-layer stochastic neural networks. ML-VAMP can be configured to compute maximum a priori (MAP) or approximate minimum mean-squared error (MMSE) estimates for these networks. We show that the performance of ML-VAMP can be exactly predicted in a certain high-dimensional random limit. Furthermore, under certain conditions, ML-VAMP yields estimates that achieve the minimum (i.e., Bayes-optimal) MSE as predicted by the replica method. In this way, ML-VAMP provides a computationally efficient method for multi-layer inference with an exact performance characterization and testable conditions for optimality in the large-system limit.
Nov-8-2019
- Country:
- North America > United States
- Ohio > Franklin County
- Columbus (0.04)
- New York > Kings County
- New York City (0.04)
- California > Los Angeles County
- Los Angeles (0.27)
- Ohio > Franklin County
- Asia > Middle East
- Jordan (0.04)
- North America > United States
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- Research Report (1.00)
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