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Learning Probabilistic Inference through Spike-Timing-Dependent Plasticity

机译:通过与时间相关的可塑性学习概率推论

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摘要

Numerous experimental data show that the brain is able to extract information from complex, uncertain, and often ambiguous experiences. Furthermore, it can use such learnt information for decision making through probabilistic inference. Several models have been proposed that aim at explaining how probabilistic inference could be performed by networks of neurons in the brain. We propose here a model that can also explain how such neural network could acquire the necessary information for that from examples. We show that spike-timing-dependent plasticity in combination with intrinsic plasticity generates in ensembles of pyramidal cells with lateral inhibition a fundamental building block for that: probabilistic associations between neurons that represent through their firing current values of random variables. Furthermore, by combining such adaptive network motifs in a recursive manner the resulting network is enabled to extract statistical information from complex input streams, and to build an internal model for the distribution p* that generates the examples it receives. This holds even if p* contains higher-order moments. The analysis of this learning process is supported by a rigorous theoretical foundation. Furthermore, we show that the network can use the learnt internal model immediately for prediction, decision making, and other types of probabilistic inference.
机译:大量的实验数据表明,大脑能够从复杂,不确定且常常是模棱两可的经历中提取信息。此外,它可以将这种学习到的信息用于通过概率推断进行决策。已经提出了几种旨在解释大脑神经元网络如何进行概率推理的模型。我们在这里提出一个模型,该模型还可以解释这种神经网络如何从示例中获取有关该信息的必要信息。我们显示,与时间依赖性相关的可塑性与固有可塑性在具有横向抑制作用的锥体细胞集合中产生了一个基本的构建模块:神经元之间的概率关联,通过其随机变量的激发电流值来表示。此外,通过以递归方式组合此类自适应网络主题,可以使所得的网络从复杂的输入流中提取统计信息,并为分布p * 建立内部模型,从而生成接收到的示例。即使p * 包含高阶矩,也是如此。对这一学习过程的分析得到了严格的理论基础的支持。此外,我们表明网络可以立即将学习到的内部模型用于预测,决策和其他类型的概率推断。

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