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首页> 外文期刊>Neural computation >Bayesian Inference and Online Learning in Poisson Neuronal Networks
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Bayesian Inference and Online Learning in Poisson Neuronal Networks

机译:泊松神经元网络中的贝叶斯推理和在线学习

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摘要

Motivated by the growing evidence for Bayesian computation in the brain, we show how a two-layer recurrent network of Poisson neurons can perform both approximate Bayesian inference and learning for any hidden Markov model. The lower-layer sensory neurons receive noisy measurements of hidden world states. The higher-layer neurons infer a posterior distribution over world states via Bayesian inference from inputs generated by sensory neurons. We demonstrate how such a neuronal network with synaptic plasticity can implement a form of Bayesian inference similar to Monte Carlo methods such as particle filtering. Each spike in a higher-layer neuron represents a sample of a particular hidden world state. The spiking activity across the neural population approximates the posterior distribution over hidden states. In this model, variability in spiking is regarded not as a nuisance but as an integral feature that provides the variability necessary for sampling during inference. We demonstrate how the network can learn the likelihood model, as well as the transition probabilities underlying the dynamics, using a Hebbian learning rule. We present results illustrating the ability of the network to perform inference and learning for arbitrary hidden Markov models.
机译:受大脑中贝叶斯计算不断增长的证据的激励,我们显示了两层Poisson神经元递归网络如何能够执行近似贝叶斯推理和对任何隐马尔可夫模型的学习。下层的感觉神经元接收隐藏世界状态的嘈杂测量值。高层神经元通过贝叶斯推断,根据感觉神经元产生的输入,推断世界状态的后验分布。我们演示了这种具有突触可塑性的神经元网络如何实现类似于蒙特卡罗方法(如粒子过滤)的贝叶斯推理形式。高层神经元中的每个尖峰代表一个特定的隐藏世界状态的样本。整个神经种群的峰值活动近似于隐藏状态的后验分布。在此模型中,尖峰的可变性不被认为是令人讨厌的,而是被视为提供推断过程中采样所必需的可变性的不可或缺的特征。我们展示了网络如何使用Hebbian学习规则来学习似然模型以及动态基础下的转移概率。我们提出的结果说明了网络对任意隐马尔可夫模型进行推理和学习的能力。

著录项

  • 来源
    《Neural computation》 |2016年第8期|1503-1526|共24页
  • 作者单位

    Department of Computer Science and Engineering, University of Washington, Seattle, WA 98195, U.S.A. huangyp@cs.washington.edu;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
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