Skip to yearly menu bar Skip to main content


Poster

Putting An End to End-to-End: Gradient-Isolated Learning of Representations

Sindy Löwe · Peter O'Connor · Bas Veeling

East Exhibition Hall B, C #66

Keywords: [ Biologically Plausible Deep Networks ] [ Deep Learning ] [ Neuroscience; Neuroscience and Cognitive Science - ] [ Algorithms -> Representation Learning; Neuroscience and Cognitive Science ]

Outstanding New Directions Paper Honorable Mention Outstanding New Directions Paper Honorable Mention
[ ]

Abstract:

We propose a novel deep learning method for local self-supervised representation learning that does not require labels nor end-to-end backpropagation but exploits the natural order in data instead. Inspired by the observation that biological neural networks appear to learn without backpropagating a global error signal, we split a deep neural network into a stack of gradient-isolated modules. Each module is trained to maximally preserve the information of its inputs using the InfoNCE bound from Oord et al [2018]. Despite this greedy training, we demonstrate that each module improves upon the output of its predecessor, and that the representations created by the top module yield highly competitive results on downstream classification tasks in the audio and visual domain. The proposal enables optimizing modules asynchronously, allowing large-scale distributed training of very deep neural networks on unlabelled datasets.

Live content is unavailable. Log in and register to view live content