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PCM-trace: Scalable Synaptic Eligibility Traces with Resistivity Drift of Phase-Change Materials (2102.07260v2)

Published 14 Feb 2021 in cs.ET

Abstract: Dedicated hardware implementations of spiking neural networks that combine the advantages of mixed-signal neuromorphic circuits with those of emerging memory technologies have the potential of enabling ultra-low power pervasive sensory processing. To endow these systems with additional flexibility and the ability to learn to solve specific tasks, it is important to develop appropriate on-chip learning mechanisms.Recently, a new class of three-factor spike-based learning rules have been proposed that can solve the temporal credit assignment problem and approximate the error back-propagation algorithm on complex tasks. However, the efficient implementation of these rules on hybrid CMOS/memristive architectures is still an open challenge. Here we present a new neuromorphic building block,called PCM-trace, which exploits the drift behavior of phase-change materials to implement long lasting eligibility traces, a critical ingredient of three-factor learning rules. We demonstrate how the proposed approach improves the area efficiency by >10X compared to existing solutions and demonstrates a techno-logically plausible learning algorithm supported by experimental data from device measurements

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Authors (8)
  1. Yigit Demirag (6 papers)
  2. Filippo Moro (9 papers)
  3. Thomas Dalgaty (6 papers)
  4. Gabriele Navarro (2 papers)
  5. Charlotte Frenkel (22 papers)
  6. Giacomo Indiveri (93 papers)
  7. Elisa Vianello (26 papers)
  8. Melika Payvand (23 papers)
Citations (22)

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