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Jeong, Hongsik
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Spontaneous sparse learning for PCM-based memristor neural networks

Author(s)
Lim, Dong-HyeokWu, ShuangZhao, RongLee, Jung-HoonJeong, HongsikShi, Luping
Issued Date
2021-01
DOI
10.1038/s41467-020-20519-z
URI
https://scholarworks.unist.ac.kr/handle/201301/52564
Fulltext
https://www.nature.com/articles/s41467-020-20519-z
Citation
NATURE COMMUNICATIONS, v.12, no.1, pp.319
Abstract
Neural networks trained by backpropagation have achieved tremendous successes on numerous intelligent tasks. However, naive gradient-based training and updating methods on memristors impede applications due to intrinsic material properties. Here, we built a 39nm 1Gb phase change memory (PCM) memristor array and quantified the unique resistance drift effect. On this basis, spontaneous sparse learning (SSL) scheme that leverages the resistance drift to improve PCM-based memristor network training is developed. During training, SSL regards the drift effect as spontaneous consistency-based distillation process that reinforces the array weights at the high-resistance state continuously unless the gradient-based method switches them to low resistance. Experiments show that the SSL not only helps the convergence of network with better performance and sparsity controllability without additional computation in handwritten digit classification. This work promotes the learning algorithms with the intrinsic properties of memristor devices, opening a new direction for development of neuromorphic computing chips.
Publisher
NATURE RESEARCH
ISSN
2041-1723
Keyword
PHASE-CHANGE MEMORYRESISTANCE DRIFTCONFIDENCECROSSBARDECISIONSYSTEMIMPACTBRAIN

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