Abstract

Many of the precise biological mechanisms of synaptic plasticity remain elusive, but simulations of neural networks have greatly enhanced our understanding of how specific global functions arise from the massively parallel computation of neurons and local Hebbian or spike-timing dependent plasticity rules. For simulating large portions of neural tissue, this has created an increasingly strong need for large scale simulations of plastic neural networks on special purpose hardware platforms, because synaptic transmissions and updates are badly matched to computing style supported by current architectures. Because of the great diversity of biological plasticity phenomena and the corresponding diversity of models, there is a great need for testing various hypotheses about plasticity before committing to one hardware implementation. Here we present a novel framework for investigating different plasticity approaches on the SpiNNaker distributed digital neural simulation platform. The key innovation of the proposed architecture is to exploit the reconfigurability of the ARM processors inside SpiNNaker, dedicating a subset of them exclusively to process synaptic plasticity updates, while the rest perform the usual neural and synaptic simulations. We demonstrate the flexibility of the proposed approach by showing the implementation of a variety of spike- and rate-based learning rules, including standard Spike-Timing dependent plasticity (STDP), voltage-dependent STDP, and the rate-based BCM rule. We analyze their performance and validate them by running classical learning experiments in real time on a 4-chip SpiNNaker board. The result is an efficient, modular, flexible and scalable framework, which provides a valuable tool for the fast and easy exploration of learning models of very different kinds on the parallel and reconfigurable SpiNNaker system.

Highlights

  • Learning is crucial for the survival of biological organisms, because it allows the development of new skills, memories, and behaviors, in order to adapt to the information acquired from their local environment

  • The study focused on learning dynamical patterns in the context of a sound perception model by tuning auditory features through presentation of stimuli and learning using the Spike-timing Dependent Plasticity (STDP) rule implemented in VLSI

  • This is due to the fact that, up to that point, all three learning rules are limited by the neural cores lagging behind real time, rather than by the plasticity process taking too long

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Summary

Introduction

Learning is crucial for the survival of biological organisms, because it allows the development of new skills, memories, and behaviors, in order to adapt to the information acquired from their local environment. Neuroscience has developed an increasingly better insight into the local plasticity mechanisms at specific types of synapses, we still have a poor understanding of the global effects of plasticity that lead to the emergence of our astonishing cognitive capabilities This is one of the great unsolved questions, for neuroscience, but with great implications for fields like philosophy, psychology, medicine, and for engineering disciplines concerned with the development of artificial intelligent systems that can learn from their environment. Most influential is the hypothesis of Hebb (1949), which says that synaptic connections strengthen when two connected neurons have correlated firing activity This has inspired many classical models for associative memory (Hopfield, 1982), feature extraction (Oja, 1982), or the development of receptive field properties (Bienenstock et al, 1982). It has been realized that there is not one standard model for STDP, but that there is a huge diversity www.frontiersin.org

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