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On training spiking neural networks by means of a novel quantum inspired machine learning method
  • Jean Michel Sellier,
  • Alexandre Martini
Jean Michel Sellier
Ericsson Canada Inc

Corresponding Author:jean.michel.sellier@ericsson.com

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Alexandre Martini
Ericsson Canada Inc
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Abstract

In spite of the high potential shown by spiking neural networks (e.g., temporal patterns), training them remains an open and complex problem [1]. In practice, while in theory these networks are computationally as powerful as mainstream artificial neural networks [2], they have not reached the same accuracy levels yet. The major reason for such situation seems to be represented by the lack of adequate training algorithms for deep spiking neural networks, since spike signals are not differentiable, i.e. no direct way to compute a gradient is provided. Recently a novel training method, based on the (digital) simulation of certain quantum systems, has been suggested. It has already shown interesting advantages, among which the fact that no gradient is required to be computed. In this work, we apply this approach to the problem of training spiking neural networks and we show that this recent training method is capable of training deep and complex spiking neural networks on the MNIST data set.
25 Sep 2023Submitted to Applied AI Letters
25 Sep 2023Submission Checks Completed
25 Sep 2023Assigned to Editor
28 Oct 2023Reviewer(s) Assigned
22 Aug 2024Review(s) Completed, Editorial Evaluation Pending
27 Aug 2024Editorial Decision: Revise Major
09 Sep 20241st Revision Received
03 Oct 2024Submission Checks Completed
03 Oct 2024Assigned to Editor
03 Oct 2024Reviewer(s) Assigned