Uncertainty Autoencoders: Learning Compressed Representations via Variational Information Maximization
Abstract
Compressed sensing techniques enable efficient acquisition and recovery of sparse, highdimensional data signals via low-dimensional projections. In this work, we propose Uncertainty Autoencoders, a learning framework for unsupervised representation learning inspired by compressed sensing. We treat the low-dimensional projections as noisy latent representations of an autoencoder and directly learn both the acquisition (i.e., encoding) and amortized recovery (i.e., decoding) procedures. Our learning objective optimizes for a tractable variational lower bound to the mutual information between the datapoints and the latent representations. We show how our framework provides a unified treatment to several lines of research in dimensionality reduction, compressed sensing, and generative modeling. Empirically, we demonstrate a 32% improvement on average over competing approaches for the task of statistical compressed sensing of high-dimensional datasets.
Cite
Text
Grover and Ermon. "Uncertainty Autoencoders: Learning Compressed Representations via Variational Information Maximization." Artificial Intelligence and Statistics, 2019.Markdown
[Grover and Ermon. "Uncertainty Autoencoders: Learning Compressed Representations via Variational Information Maximization." Artificial Intelligence and Statistics, 2019.](https://mlanthology.org/aistats/2019/grover2019aistats-uncertainty/)BibTeX
@inproceedings{grover2019aistats-uncertainty,
title = {{Uncertainty Autoencoders: Learning Compressed Representations via Variational Information Maximization}},
author = {Grover, Aditya and Ermon, Stefano},
booktitle = {Artificial Intelligence and Statistics},
year = {2019},
pages = {2514-2524},
volume = {89},
url = {https://mlanthology.org/aistats/2019/grover2019aistats-uncertainty/}
}