MLLGNENCDec 20, 2013

Neuronal Synchrony in Complex-Valued Deep Networks

arXiv:1312.6115v5121 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of enhancing deep network versatility for researchers in computational neuroscience and AI, though it is incremental as it builds on existing deep learning frameworks.

The paper tackled the challenge of incorporating spike timing mechanisms from cortical circuits into deep networks by introducing a complex-valued neural network formulation with firing rates and phases. They demonstrated its potential in simple experiments for dynamic binding of distributed object representations.

Deep learning has recently led to great successes in tasks such as image recognition (e.g Krizhevsky et al., 2012). However, deep networks are still outmatched by the power and versatility of the brain, perhaps in part due to the richer neuronal computations available to cortical circuits. The challenge is to identify which neuronal mechanisms are relevant, and to find suitable abstractions to model them. Here, we show how aspects of spike timing, long hypothesized to play a crucial role in cortical information processing, could be incorporated into deep networks to build richer, versatile representations. We introduce a neural network formulation based on complex-valued neuronal units that is not only biologically meaningful but also amenable to a variety of deep learning frameworks. Here, units are attributed both a firing rate and a phase, the latter indicating properties of spike timing. We show how this formulation qualitatively captures several aspects thought to be related to neuronal synchrony, including gating of information processing and dynamic binding of distributed object representations. Focusing on the latter, we demonstrate the potential of the approach in several simple experiments. Thus, neuronal synchrony could be a flexible mechanism that fulfills multiple functional roles in deep networks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes