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Homeostatic plasticity in Bayesian spiking networks as Expectation Maximization with posterior constraints

机译:贝叶斯尖峰网络中的稳态可塑性作为具有后验约束的期望最大化

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Recent spiking network models of Bayesian inference and unsupervised learning frequently assume either inputs to arrive in a special format or employ complex computations in neuronal activation functions and synaptic plasticity rules. Here we show in a rigorous mathematical treatment how homeostatic processes, which have previously received little attention in this context, can overcome common theoretical limitations and facilitate the neural implementation and performance of existing models. In particular, we show that homeostatic plasticity can be understood as the enforcement of a 'balancing' posterior constraint during probabilistic inference and learning with Expectation Maximization. We link homeostatic dynamics to the theory of variational inference, and show that nontrivial terms, which typically appear during probabilistic inference in a large class of models, drop out. We demonstrate the feasibility of our approach in a spiking Winner-Take-All architecture of Bayesian inference and learning. Finally, we sketch how the mathematical framework can be extended to richer recurrent network architectures. Altogether, our theory provides a novel perspective on the interplay of homeostatic processes and synaptic plasticity in cortical microcircuits, and points to an essential role of homeostasis during inference and learning in spiking networks.
机译:贝叶斯推理和无监督学习的最新尖峰网络模型经常假设输入以特殊格式到达,或者在神经元激活功能和突触可塑性规则中采用复杂的计算。在这里,我们以严格的数学处理方法展示了以前在这种情况下鲜为人知的稳态过程如何克服常见的理论局限性,并促进了现有模型的神经实现和性能。尤其是,我们表明,体内稳态可塑性可以理解为概率推断和期望最大化学习过程中“平衡”后约束的实施。我们将稳态动力学与变分推论联系起来,并表明通常在概率推论过程中出现的非平凡项会掉出一大类模型。我们在贝叶斯推理和学习的出色的Winner-Take-All体系结构中证明了我们的方法的可行性。最后,我们概述了如何将数学框架扩展到更丰富的循环网络体系结构。总而言之,我们的理论为稳态的过程与皮质微电路中的突触可塑性之间的相互作用提供了新颖的观点,并指出了稳态在突增网络的推理和学习过程中的重要作用。

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