4.5 Review

Toward Reflective Spiking Neural Networks Exploiting Memristive Devices

期刊

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fncom.2022.859874

关键词

spiking neural networks (SNNs); memristors and memristive systems; high-dimensional brain; plasticity; reflective systems

资金

  1. Russian Science Foundation [21-12-00246, 21-1100280, 21-7100136]
  2. Russian Foundation for Basic Research [20-01-00368]
  3. Ministry of Education and Science of Russia [075-15-2021-634, 07402-2018-330]
  4. Santander-UCM grant [PR44/21]
  5. scientific program of the National Center for Physics and Mathematics (project Artificial intelligence and big data in technical, industrial, natural and social systems)
  6. Russian Science Foundation [21-12-00246] Funding Source: Russian Science Foundation

向作者/读者索取更多资源

The design of modern convolutional artificial neural networks (ANNs) imitates the architecture of the visual cortex, while spiking neural networks (SNNs) have the potential for a qualitative leap in cognitive computations. However, the training of SNNs remains challenging, and the concept of a high-dimensional brain provides new insights and possibilities for the development of neural networks.
The design of modern convolutional artificial neural networks (ANNs) composed of formal neurons copies the architecture of the visual cortex. Signals proceed through a hierarchy, where receptive fields become increasingly more complex and coding sparse. Nowadays, ANNs outperform humans in controlled pattern recognition tasks yet remain far behind in cognition. In part, it happens due to limited knowledge about the higher echelons of the brain hierarchy, where neurons actively generate predictions about what will happen next, i.e., the information processing jumps from reflex to reflection. In this study, we forecast that spiking neural networks (SNNs) can achieve the next qualitative leap. Reflective SNNs may take advantage of their intrinsic dynamics and mimic complex, not reflex-based, brain actions. They also enable a significant reduction in energy consumption. However, the training of SNNs is a challenging problem, strongly limiting their deployment. We then briefly overview new insights provided by the concept of a high-dimensional brain, which has been put forward to explain the potential power of single neurons in higher brain stations and deep SNN layers. Finally, we discuss the prospect of implementing neural networks in memristive systems. Such systems can densely pack on a chip 2D or 3D arrays of plastic synaptic contacts directly processing analog information. Thus, memristive devices are a good candidate for implementing in-memory and in-sensor computing. Then, memristive SNNs can diverge from the development of ANNs and build their niche, cognitive, or reflective computations.

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