Bayesian interpretations of neural processing require that biological mechanisms represent and operate upon probability distributions in accordance with Bayes' theorem. Many have speculated that synaptic failure constitutes a mechanism of variational, i.e., approximate, Bayesian inference in the brain. Whereas models have previously used synaptic failure to sample over uncertainty in model parameters, we demonstrate that by adapting transmission probabilities to learned network weights, synaptic failure can sample not only over model uncertainty, but complete posterior predictive distributions as well. Our results potentially explain the brain's ability to perform probabilistic searches and to approximate complex integrals. These operations are involved in numerous calculations, including likelihood evaluation and state value estimation for complex planning.
翻译:对神经处理的贝叶斯解释要求生物机制根据贝耶斯的理论根据概率分布来表示和操作生物机制。许多人推测,合成失灵构成一种变异机制,即大脑中的近似贝耶斯推断机制。虽然模型以前曾使用合成失灵来抽样模型参数的不确定性,但我们证明,通过将传输概率调整到学习的网络重量,合成失灵不仅可以抽样模型不确定性,还可以抽样完整的后方预测分布。我们的结果有可能解释大脑进行概率搜索和大致复杂整体体的能力。这些操作涉及无数的计算,包括复杂规划的可能性评估和国家价值估计。