| Literature DB >> 33091719 |
Sebastian Billaudelle1, Benjamin Cramer2, Mihai A Petrovici3, Korbinian Schreiber4, David Kappel5, Johannes Schemmel4, Karlheinz Meier4.
Abstract
In computational neuroscience, as well as in machine learning, neuromorphic devices promise an accelerated and scalable alternative to neural network simulations. Their neural connectivity and synaptic capacity depend on their specific design choices, but is always intrinsically limited. Here, we present a strategy to achieve structural plasticity that optimizes resource allocation under these constraints by constantly rewiring the pre- and postsynaptic partners while keeping the neuronal fan-in constant and the connectome sparse. In particular, we implemented this algorithm on the analog neuromorphic system BrainScaleS-2. It was executed on a custom embedded digital processor located on chip, accompanying the mixed-signal substrate of spiking neurons and synapse circuits. We evaluated our implementation in a simple supervised learning scenario, showing its ability to optimize the network topology with respect to the nature of its training data, as well as its overall computational efficiency.Keywords: BrainScaleS; Neural networks; Receptive fields; Spiking; Structural plasticity
Mesh:
Year: 2020 PMID: 33091719 DOI: 10.1016/j.neunet.2020.09.024
Source DB: PubMed Journal: Neural Netw ISSN: 0893-6080