D-126 | Uncertainty in latent representations of variational autoencoders optimized for visual tasks

D-126 | Uncertainty in latent representations of variational autoencoders optimized for visual tasks 150 150 SAN 2024 Annual Meeting

Theoretical and Computational Neuroscience
Author: Josefina Catoni | Email: jcatoni@sinc.unl.edu.ar


Josefina Catoni, Domonkos Martos, Enzo Ferrante1°3°,  Diego H. Milone, Ferenc Csikor, Balázs Meszéna, Gergő Orbán,  Rodrigo Echeveste

Research Institute for Signals, Systems and Computational Intelligence, sinc(i), CONICET-UNL, Santa Fe, Argentina
Computational Systems Neuroscience Lab, Department of Computational Sciences, HUN-REN, Wigner Research Centre for Physics, Budapest, Hungary
Department of Computer Science, University of Buenos Aires, Buenos Aires, Argentina

Deep learning methods are increasingly becoming instrumental as modeling tools in computational neuroscience, employing optimality principles to build bridges between neural responses and perception or behavior. Developing models that adequately represent uncertainty is however challenging for deep learning methods, which often suffer from calibration problems. This constitutes a difficulty in particular when modeling cortical circuits in terms of Bayesian inference, beyond single point estimates such as the posterior mean or the maximum a posteriori. In this work we systematically studied uncertainty representations in latent representations of variational auto-encoders (VAEs), both in a perceptual task from natural images and in two other canonical tasks of computer vision, finding a poor alignment between uncertainty and informativeness or ambiguities in the images. We next showed how a novel approach which we call explaining-away variational auto-encoders (EA-VAEs), fixes these issues, producing meaningful reports of uncertainty in a variety of scenarios, including interpolation, image corruption, and even out-of-distribution detection. We show EA-VAEs may prove useful both as models of perception in computational neuroscience and as inference tools in computer vision.

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