Learning to Learn with Feedback and Local PlasticityDownload PDF

Published: 02 Oct 2019, Last Modified: 05 May 2023Real Neurons & Hidden Units @ NeurIPS 2019 OralReaders: Everyone
TL;DR: Networks that learn with feedback connections and local plasticity rules can be optimized for using meta learning.
Keywords: biologically plausible learning, meta learning
Abstract: Developing effective biologically plausible learning rules for deep neural networks is important for advancing connections between deep learning and neuroscience. To date, local synaptic learning rules like those employed by the brain have failed to match the performance of backpropagation in deep networks. In this work, we employ meta-learning to discover networks that learn using feedback connections and local, biologically motivated learning rules. Importantly, the feedback connections are not tied to the feedforward weights, avoiding any biologically implausible weight transport. It can be shown mathematically that this approach has sufficient expressivity to approximate any online learning algorithm. Our experiments show that the meta-trained networks effectively use feedback connections to perform online credit assignment in multi-layer architectures. Moreover, we demonstrate empirically that this model outperforms a state-of-the-art gradient-based meta-learning algorithm for continual learning on regression and classification benchmarks. This approach represents a step toward biologically plausible learning mechanisms that can not only match gradient descent-based learning, but also overcome its limitations.
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