Litcius/Paper detail

JFB: Jacobian-Free Backpropagation for Implicit Networks

Samy Wu Fung, Howard Heaton, Qiuwei Li, Daniel McKenzie, Stanley Osher, Wotao Yin

2022Proceedings of the AAAI Conference on Artificial Intelligence50 citationsDOIOpen Access PDF

Abstract

A promising trend in deep learning replaces traditional feedforward networks with implicit networks. Unlike traditional networks, implicit networks solve a fixed point equation to compute inferences. Solving for the fixed point varies in complexity, depending on provided data and an error tolerance. Importantly, implicit networks may be trained with fixed memory costs in stark contrast to feedforward networks, whose memory requirements scale linearly with depth. However, there is no free lunch --- backpropagation through implicit networks often requires solving a costly Jacobian-based equation arising from the implicit function theorem. We propose Jacobian-Free Backpropagation (JFB), a fixed-memory approach that circumvents the need to solve Jacobian-based equations. JFB makes implicit networks faster to train and significantly easier to implement, without sacrificing test accuracy. Our experiments show implicit networks trained with JFB are competitive with feedforward networks and prior implicit networks given the same number of parameters.

Topics & Concepts

Jacobian matrix and determinantBackpropagationComputer scienceArtificial neural networkFeed forwardImplicit function theoremDeep learningAlgorithmFixed pointTheoretical computer scienceArtificial intelligenceMathematicsApplied mathematicsMathematical analysisEngineeringControl engineeringModel Reduction and Neural NetworksDam Engineering and SafetyAdvanced Image Processing Techniques