Affiliation:
1. Department of Physics and Astronomy, University of Pennsylvania, Philadelphia, PA 19104
2. Center for Computational Biology, Flatiron Institute, Simons Foundation, New York, NY 10010
3. Department of Electrical and Systems Engineering, University of Pennsylvania, Philadelphia, PA 19104
Abstract
Standard deep learning algorithms require differentiating large nonlinear networks, a process that is slow and power-hungry. Electronic
contrastive local learning networks
(CLLNs) offer potentially fast, efficient, and fault-tolerant hardware for analog machine learning, but existing implementations are linear, severely limiting their capabilities. These systems differ significantly from artificial neural networks as well as the brain, so the feasibility and utility of incorporating nonlinear elements have not been explored. Here, we introduce a nonlinear CLLN—an analog electronic network made of self-adjusting nonlinear resistive elements based on transistors. We demonstrate that the system learns tasks unachievable in linear systems, including XOR (exclusive or) and nonlinear regression, without a computer. We find our decentralized system reduces modes of training error in order (mean, slope, curvature), similar to
spectral bias
in artificial neural networks. The circuitry is robust to damage, retrainable in seconds, and performs learned tasks in microseconds while dissipating only picojoules of energy across each transistor. This suggests enormous potential for fast, low-power computing in edge systems like sensors, robotic controllers, and medical devices, as well as manufacturability at scale for performing and studying emergent learning.
Funder
National Science Foundation
Simons Foundation
U.S. Department of Energy
Publisher
Proceedings of the National Academy of Sciences
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献