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基于脉冲神经元和前馈主旨信号的预测编码。

Predictive coding with spiking neurons and feedforward gist signaling.

作者信息

Lee Kwangjun, Dora Shirin, Mejias Jorge F, Bohte Sander M, Pennartz Cyriel M A

机构信息

Cognitive and Systems Neuroscience Group, Swammerdam Institute for Life Sciences, Faculty of Science, University of Amsterdam, Amsterdam, Netherlands.

Department of Computer Science, School of Science, Loughborough University, Loughborough, United Kingdom.

出版信息

Front Comput Neurosci. 2024 Apr 12;18:1338280. doi: 10.3389/fncom.2024.1338280. eCollection 2024.

DOI:10.3389/fncom.2024.1338280
PMID:38680678
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11045951/
Abstract

Predictive coding (PC) is an influential theory in neuroscience, which suggests the existence of a cortical architecture that is constantly generating and updating predictive representations of sensory inputs. Owing to its hierarchical and generative nature, PC has inspired many computational models of perception in the literature. However, the biological plausibility of existing models has not been sufficiently explored due to their use of artificial neurons that approximate neural activity with firing rates in the continuous time domain and propagate signals synchronously. Therefore, we developed a spiking neural network for predictive coding (SNN-PC), in which neurons communicate using event-driven and asynchronous spikes. Adopting the hierarchical structure and Hebbian learning algorithms from previous PC neural network models, SNN-PC introduces two novel features: (1) a fast feedforward sweep from the input to higher areas, which generates a spatially reduced and abstract representation of input (i.e., a neural code for the gist of a scene) and provides a neurobiological alternative to an arbitrary choice of priors; and (2) a separation of positive and negative error-computing neurons, which counters the biological implausibility of a bi-directional error neuron with a very high baseline firing rate. After training with the MNIST handwritten digit dataset, SNN-PC developed hierarchical internal representations and was able to reconstruct samples it had not seen during training. SNN-PC suggests biologically plausible mechanisms by which the brain may perform perceptual inference and learning in an unsupervised manner. In addition, it may be used in neuromorphic applications that can utilize its energy-efficient, event-driven, local learning, and parallel information processing nature.

摘要

预测编码(PC)是神经科学中一种有影响力的理论,它表明存在一种皮层架构,该架构不断生成和更新感觉输入的预测表征。由于其分层和生成性的本质,PC激发了文献中许多感知计算模型。然而,由于现有模型使用在连续时间域中用发放率近似神经活动并同步传播信号的人工神经元,其生物学合理性尚未得到充分探索。因此,我们开发了一种用于预测编码的脉冲神经网络(SNN-PC),其中神经元使用事件驱动和异步脉冲进行通信。SNN-PC采用了先前PC神经网络模型的分层结构和赫布学习算法,引入了两个新特征:(1)从输入到更高区域的快速前馈扫描,它生成输入的空间缩减和抽象表征(即场景要点的神经编码),并为任意选择先验提供了一种神经生物学替代方案;(2)正误差计算神经元和负误差计算神经元的分离,这克服了具有非常高基线发放率的双向误差神经元的生物学不合理性。在用MNIST手写数字数据集训练后,SNN-PC形成了分层内部表征,并且能够重建其在训练期间未见过的样本。SNN-PC提出了大脑可能以无监督方式执行感知推理和学习的生物学合理机制。此外,它可用于神经形态应用,这些应用可以利用其节能、事件驱动、局部学习和并行信息处理的特性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9460/11045951/06b300b0d208/fncom-18-1338280-g0008.jpg
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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9460/11045951/06b300b0d208/fncom-18-1338280-g0008.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9460/11045951/c6c91107f6d3/fncom-18-1338280-g0001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9460/11045951/82a18b918422/fncom-18-1338280-g0002.jpg
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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9460/11045951/5fd762e73f2b/fncom-18-1338280-g0005.jpg
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3
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4
The representation of occluded image regions in area V1 of monkeys and humans.猴和人视皮层 V1 区对遮挡图像区域的表示。
Curr Biol. 2023 Sep 25;33(18):3865-3871.e3. doi: 10.1016/j.cub.2023.08.010. Epub 2023 Aug 28.
5
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6
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7
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8
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9
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Front Comput Neurosci. 2021 Jul 28;15:666131. doi: 10.3389/fncom.2021.666131. eCollection 2021.