High-Order Associative Learning Based on Memristive Circuits for Efficient Learning

October 22, 2024 ยท Declared Dead ยท ๐Ÿ› International Symposium on Circuits and Systems

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Authors Shengbo Wang, Xuemeng Li, Jialin Ding, Weihao Ma, Ying Wang, Luigi Occhipinti, Arokia Nathan, Shuo Gao arXiv ID 2410.16734 Category cs.NE: Neural & Evolutionary Cross-listed eess.SP, physics.app-ph Citations 0 Venue International Symposium on Circuits and Systems Last Checked 4 months ago
Abstract
Memristive associative learning has gained significant attention for its ability to mimic fundamental biological learning mechanisms while maintaining system simplicity. In this work, we introduce a high-order memristive associative learning framework with a biologically realistic structure. By utilizing memristors as synaptic modules and their state information to bridge different orders of associative learning, our design effectively establishes associations between multiple stimuli and replicates the transient nature of high-order associative learning. In Pavlov's classical conditioning experiments, our design achieves a 230% improvement in learning efficiency compared to previous works, with memristor power consumption in the synaptic modules remaining below 11 ฮผW. In large-scale image recognition tasks, we utilize a 20*20 memristor array to represent images, enabling the system to recognize and label test images with semantic information at 100% accuracy. This scalability across different tasks highlights the framework's potential for a wide range of applications, offering enhanced learning efficiency for current memristor-based neuromorphic systems.
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