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首页> 外文期刊>Frontiers in Computational Neuroscience >Probabilistic inference in discrete spaces can be implemented into networks of LIF neurons
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Probabilistic inference in discrete spaces can be implemented into networks of LIF neurons

机译:离散空间中的概率推论可以实现为LIF神经元网络

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The means by which cortical neural networks are able to efficiently solve inference problems remains an open question in computational neuroscience. Recently, abstract models of Bayesian computation in neural circuits have been proposed, but they lack a mechanistic interpretation at the single-cell level. In this article, we describe a complete theoretical framework for building networks of leaky integrate-and-fire neurons that can sample from arbitrary probability distributions over binary random variables. We test our framework for a model inference task based on a psychophysical phenomenon (the Knill-Kersten optical illusion) and further assess its performance when applied to randomly generated distributions. As the local computations performed by the network strongly depend on the interaction between neurons, we compare several types of couplings mediated by either single synapses or interneuron chains. Due to its robustness to substrate imperfections such as parameter noise and background noise correlations, our model is particularly interesting for implementation on novel, neuro-inspired computing architectures, which can thereby serve as a fast, low-power substrate for solving real-world inference problems.
机译:皮质神经网络能够有效解决推理问题的方法仍然是计算神经科学中的一个悬而未决的问题。最近,已经提出了神经电路中的贝叶斯计算的抽象模型,但是它们在单细胞水平上缺乏机械解释。在本文中,我们描述了一个完整的理论框架,用于构建泄漏集成并发射神经元的网络,该网络可以从二进制随机变量的任意概率分布中采样。我们测试基于心理物理现象(Knill-Kersten错觉)的模型推理任务的框架,并进一步评估将其应用于随机生成的分布时的性能。由于网络执行的本地计算很大程度上取决于神经元之间的相互作用,因此我们比较了单个突触或神经元间链介导的几种偶联类型。由于其对诸如参数噪声和背景噪声相关性之类的底物缺陷的鲁棒性,我们的模型对于在新颖的,受神经启发的计算架构上的实现特别有趣,它可以用作解决现实世界推理的快速,低功耗的底物问题。

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