论文标题

不可知论物理驱动的深度学习

Agnostic Physics-Driven Deep Learning

论文作者

Scellier, Benjamin, Mishra, Siddhartha, Bengio, Yoshua, Ollivier, Yann

论文摘要

这项工作确定了物理系统可以通过不可吻合的平衡传播(AEQPROP)程序执行统计学习,而无需梯度计算,该程序结合了能量最小化,稳态控制和对正确响应的推动。在AEQPROP中,系统的细节不必知道:该过程仅基于外部操作,并且在没有明确梯度计算的情况下会产生随机梯度下降。多亏了轻推,该系统为每个培训样本执行了一个真实的,订单的梯度步骤,与依赖反复试验的零阶方法相比。即使系统的详细信息鲜为人知,该过程大大扩大了具有足够可控参数的任何系统的潜在硬件范围。 AEQPROP还确定,在天然(生物)物理系统中,基于梯度的统计学习可能是由通用,相对简单的机制造成的,而没有反向传播及其对部分导数的分析知识的要求。

This work establishes that a physical system can perform statistical learning without gradient computations, via an Agnostic Equilibrium Propagation (Aeqprop) procedure that combines energy minimization, homeostatic control, and nudging towards the correct response. In Aeqprop, the specifics of the system do not have to be known: the procedure is based only on external manipulations, and produces a stochastic gradient descent without explicit gradient computations. Thanks to nudging, the system performs a true, order-one gradient step for each training sample, in contrast with order-zero methods like reinforcement or evolutionary strategies, which rely on trial and error. This procedure considerably widens the range of potential hardware for statistical learning to any system with enough controllable parameters, even if the details of the system are poorly known. Aeqprop also establishes that in natural (bio)physical systems, genuine gradient-based statistical learning may result from generic, relatively simple mechanisms, without backpropagation and its requirement for analytic knowledge of partial derivatives.

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