A frugal Spiking Neural Network for unsupervised classification of continuous multivariate temporal data
Sai Deepesh Pokala, Marie Bernert, Takuya Nanami, Takashi Kohno,, Timoth\'ee L\'evi, Blaise Yvert

TL;DR
This paper presents a simple, biologically inspired spiking neural network that efficiently classifies complex multivariate temporal data in an unsupervised, online manner, suitable for low-power neural interface applications.
Contribution
It introduces a frugal single-layer SNN that uses biologically plausible plasticity rules for unsupervised classification of continuous multivariate temporal data.
Findings
Effective recognition of overlapping temporal patterns in simulated data
Successful classification of speech and neural data
Operates efficiently with minimal neurons and power consumption
Abstract
As neural interfaces become more advanced, there has been an increase in the volume and complexity of neural data recordings. These interfaces capture rich information about neural dynamics that call for efficient, real-time processing algorithms to spontaneously extract and interpret patterns of neural dynamics. Moreover, being able to do so in a fully unsupervised manner is critical as patterns in vast streams of neural data might not be easily identifiable by the human eye. Formal Deep Neural Networks (DNNs) have come a long way in performing pattern recognition tasks for various static and sequential pattern recognition applications. However, these networks usually require large labeled datasets for training and have high power consumption preventing their future embedding in active brain implants. An alternative aimed at addressing these issues are Spiking Neural Networks (SNNs)…
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Taxonomy
TopicsNeural Networks and Applications
MethodsSpiking Neural Networks
