Sparsifying Spiking Networks through Local Rhythms

04/30/2023
by   Wilkie Olin-Ammentorp, et al.
0

It has been well-established that within conventional neural networks, many of the values produced at each layer are zero. In this work, I demonstrate that spiking neural networks can prevent the transmission of spikes representing values close to zero using local information. This can reduce the amount of energy required for communication and computation in these networks while preserving accuracy. Additionally, this demonstrates a novel application of biologically observed spiking rhythms.

READ FULL TEXT
research
03/19/2023

A Comprehensive Review of Spiking Neural Networks: Interpretation, Optimization, Efficiency, and Best Practices

Biological neural networks continue to inspire breakthroughs in neural n...
research
05/17/2022

Function Regression using Spiking DeepONet

One of the main broad applications of deep learning is function regressi...
research
11/22/2022

Fast Exploration of the Impact of Precision Reduction on Spiking Neural Networks

Approximate Computing (AxC) techniques trade off the computation accurac...
research
10/18/2018

Logic Negation with Spiking Neural P Systems

Nowadays, the success of neural networks as reasoning systems is doubtle...
research
06/28/2022

The Case for RISP: A Reduced Instruction Spiking Processor

In this paper, we introduce RISP, a reduced instruction spiking processo...
research
04/10/2018

Effects of Higher Order and Long-Range Synchronizations for Classification and Computing in Oscillator-Based Spiking Neural Networks

Development of artificial oscillator-based spiking neural networks (SNN)...
research
06/21/2022

Structural Stability of Spiking Neural Networks

The past decades have witnessed an increasing interest in spiking neural...

Please sign up or login with your details

Forgot password? Click here to reset