论文标题

基于能量的模型的无限推理限制的反向传播:统一预测编码,平衡传播和对比性Hebbian学习

Backpropagation at the Infinitesimal Inference Limit of Energy-Based Models: Unifying Predictive Coding, Equilibrium Propagation, and Contrastive Hebbian Learning

论文作者

Millidge, Beren, Song, Yuhang, Salvatori, Tommaso, Lukasiewicz, Thomas, Bogacz, Rafal

论文摘要

大脑如何执行信用分配是神经科学中的基本未解决问题。已经提出了许多“生物学上合理的”算法,这些算法计算了近似通过反向传播计算的梯度(BP),并且以更紧密地满足神经回路施加的约束的方式运行。许多这样的算法都利用了基于能量的模型(EBM)的框架,其中对模型中的所有自由变量进行了优化以最大程度地减少全局能量函数。但是,在文献中,这些算法存在于孤立状态,而没有统一的理论将它们联系在一起。 Here, we provide a comprehensive theory of the conditions under which EBMs can approximate BP, which lets us unify many of the BP approximation results in the literature (namely, predictive coding, equilibrium propagation, and contrastive Hebbian learning) and demonstrate that their approximation to BP arises from a simple and general mathematical property of EBMs at free-phase equilibrium.然后可以通过不同的能量函数以不同的方式利用该属性,这些特定选择产生了BP Approxatimating算法的家族,这两种算法都包含文献中的已知结果,并且可用于推导新的结果。

How the brain performs credit assignment is a fundamental unsolved problem in neuroscience. Many `biologically plausible' algorithms have been proposed, which compute gradients that approximate those computed by backpropagation (BP), and which operate in ways that more closely satisfy the constraints imposed by neural circuitry. Many such algorithms utilize the framework of energy-based models (EBMs), in which all free variables in the model are optimized to minimize a global energy function. However, in the literature, these algorithms exist in isolation and no unified theory exists linking them together. Here, we provide a comprehensive theory of the conditions under which EBMs can approximate BP, which lets us unify many of the BP approximation results in the literature (namely, predictive coding, equilibrium propagation, and contrastive Hebbian learning) and demonstrate that their approximation to BP arises from a simple and general mathematical property of EBMs at free-phase equilibrium. This property can then be exploited in different ways with different energy functions, and these specific choices yield a family of BP-approximating algorithms, which both includes the known results in the literature and can be used to derive new ones.

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