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MT-SNN: Spiking Neural Network that Enables Single-Tasking of Multiple Tasks. (arXiv:2208.01522v1 [cs.NE])
Aug. 3, 2022, 1:10 a.m. | Paolo G. Cachi, Sebastian Ventura, Krzysztof J. Cios
cs.LG updates on arXiv.org arxiv.org
In this paper we explore capabilities of spiking neural networks in solving
multi-task classification problems using the approach of single-tasking of
multiple tasks. We designed and implemented a multi-task spiking neural network
(MT-SNN) that can learn two or more classification tasks while performing one
task at a time. The task to perform is selected by modulating the firing
threshold of leaky integrate and fire neurons used in this work. The network is
implemented using Intel's Lava platform for the Loihi2 …
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