Text Classification in Memristor-based Spiking Neural Networks
Jinqi Huang, Alex Serb, Spyros Stathopoulos, Themis Prodromakis

TL;DR
This paper explores implementing memristor-based spiking neural networks for text classification, demonstrating comparable accuracy to traditional neural networks through simulation and two training approaches.
Contribution
It develops a simulation framework for memristor-based SNNs in text classification and compares conversion and direct training methods for achieving high accuracy.
Findings
Achieved 85.88% accuracy via ANN-to-SNN conversion
Achieved 84.86% accuracy with direct memristor-based SNN training
Identified key parameters affecting network performance
Abstract
Memristors, emerging non-volatile memory devices, have shown promising potential in neuromorphic hardware designs, especially in spiking neural network (SNN) hardware implementation. Memristor-based SNNs have been successfully applied in a wide range of various applications, including image classification and pattern recognition. However, implementing memristor-based SNNs in text classification is still under exploration. One of the main reasons is that training memristor-based SNNs for text classification is costly due to the lack of efficient learning rules and memristor non-idealities. To address these issues and accelerate the research of exploring memristor-based spiking neural networks in text classification applications, we develop a simulation framework with a virtual memristor array using an empirical memristor model. We use this framework to demonstrate a sentiment analysis…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural dynamics and brain function · Photoreceptor and optogenetics research
