Frequency Propagation: Multimechanism Learning in Nonlinear Physical Networks

IF 2.7 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Vidyesh Rao Anisetti;Ananth Kandala;Benjamin Scellier;J. M. Schwarz
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引用次数: 0

Abstract

We introduce frequency propagation, a learning algorithm for nonlinear physical networks. In a resistive electrical circuit with variable resistors, an activation current is applied at a set of input nodes at one frequency and an error current is applied at a set of output nodes at another frequency. The voltage response of the circuit to these boundary currents is the superposition of an activation signal and an error signal whose coefficients can be read in different frequencies of the frequency domain. Each conductance is updated proportionally to the product of the two coefficients. The learning rule is local and proved to perform gradient descent on a loss function. We argue that frequency propagation is an instance of a multimechanism learning strategy for physical networks, be it resistive, elastic, or flow networks. Multimechanism learning strategies incorporate at least two physical quantities, potentially governed by independent physical mechanisms, to act as activation and error signals in the training process. Locally available information about these two signals is then used to update the trainable parameters to perform gradient descent. We demonstrate how earlier work implementing learning via chemical signaling in flow networks (Anisetti, Scellier, et al., 2023) also falls under the rubric of multimechanism learning.
频率传播:非线性物理网络中的多机制学习
我们介绍一种非线性物理网络的学习算法--频率传播。在一个带有可变电阻的电阻电路中,一组输入节点上施加一个频率的激活电流,一组输出节点上施加一个频率的误差电流。电路对这些边界电流的电压响应是激活信号和误差信号的叠加,这两个信号的系数可在频域的不同频率下读取。每个电导的更新都与这两个系数的乘积成比例。学习规则是局部的,并被证明可在损失函数上执行梯度下降。我们认为,频率传播是物理网络(无论是电阻网络、弹性网络还是流动网络)多机制学习策略的一个实例。多机制学习策略包含至少两个物理量,可能由独立的物理机制控制,作为训练过程中的激活信号和误差信号。关于这两个信号的局部可用信息随后被用于更新可训练参数,以执行梯度下降。我们展示了早先在流网络中通过化学信号进行学习的工作(Anisetti, Scellier, et al.
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来源期刊
Neural Computation
Neural Computation 工程技术-计算机:人工智能
CiteScore
6.30
自引率
3.40%
发文量
83
审稿时长
3.0 months
期刊介绍: Neural Computation is uniquely positioned at the crossroads between neuroscience and TMCS and welcomes the submission of original papers from all areas of TMCS, including: Advanced experimental design; Analysis of chemical sensor data; Connectomic reconstructions; Analysis of multielectrode and optical recordings; Genetic data for cell identity; Analysis of behavioral data; Multiscale models; Analysis of molecular mechanisms; Neuroinformatics; Analysis of brain imaging data; Neuromorphic engineering; Principles of neural coding, computation, circuit dynamics, and plasticity; Theories of brain function.
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