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Credit Assignment Neural Networks

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Seminar✓ Recording AvailableNeuroscience

Credit Assignment in Neural Networks through Deep Feedback Control

Alexander Meulemans

Institute of Neuroinformatics, University of Zürich and ETH Zürich

Schedule
Thursday, September 30, 2021

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Thursday, September 30, 2021

2:00 PM Europe/London

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Host: Sheffield ML

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Sheffield ML

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70.00 minutes

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Abstract

The success of deep learning sparked interest in whether the brain learns by using similar techniques for assigning credit to each synaptic weight for its contribution to the network output. However, the majority of current attempts at biologically-plausible learning methods are either non-local in time, require highly specific connectivity motives, or have no clear link to any known mathematical optimization method. Here, we introduce Deep Feedback Control (DFC), a new learning method that uses a feedback controller to drive a deep neural network to match a desired output target and whose control signal can be used for credit assignment. The resulting learning rule is fully local in space and time and approximates Gauss-Newton optimization for a wide range of feedback connectivity patterns. To further underline its biological plausibility, we relate DFC to a multi-compartment model of cortical pyramidal neurons with a local voltage-dependent synaptic plasticity rule, consistent with recent theories of dendritic processing. By combining dynamical system theory with mathematical optimization theory, we provide a strong theoretical foundation for DFC that we corroborate with detailed results on toy experiments and standard computer-vision benchmarks.

Topics

Gauss-Newton optimizationcontrolcortical pyramidal neuronscredit assignmentdeep learningdynamical systemsfeedback controlmachine learningmathematical optimizationneural networkssynaptic plasticitytheory

About the Speaker

Alexander Meulemans

Institute of Neuroinformatics, University of Zürich and ETH Zürich

Contact & Resources

Personal Website

alexandermeulemans.com

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