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Categorization and decision-making in a neurobiologically plausible spiking network using a STDP-like learning rule

机译:使用类STDP的学习规则在神经生物学上可行的加标网络中进行分类和决策

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Understanding how the human brain is able to efficiently perceive and understand a visual scene is still a field of ongoing research. Although many studies have focused on the design and optimization of neural networks to solve visual recognition tasks, most of them either lack neurobiologically plausible learning rules or decision-making processes. Here we present a large-scale model of a hierarchical spiking neural network (SNN) that integrates a low-level memory encoding mechanism with a higher-level decision process to perform a visual classification task in real-time. The model consists of Izhikevich neurons and conductance-based synapses for realistic approximation of neuronal dynamics, a spike-timing-dependent plasticity (STDP) synaptic learning rule with additional synaptic dynamics for memory encoding, and an accumulator model for memory retrieval and categorization. The full network, which comprised 71,026 neurons and approximately 133 million synapses, ran in real-time on a single off-the-shelf graphics processing unit (GPU). The network was constructed on a publicly available SNN simulator that supports general-purpose neuromorphic computer chips. The network achieved 92% correct classifications on MNIST in 100 rounds of random sub-sampling, which is comparable to other SNN approaches and provides a conservative and reliable performance metric. Additionally, the model correctly predicted reaction times from psychophysical experiments. Because of the scalability of the approach and its neurobiological fidelity, the current model can be extended to an efficient neuromorphic implementation that supports more generalized object recognition and decision-making architectures found in the brain.
机译:理解人脑如何能够有效地感知和理解视觉场景仍然是正在进行的研究领域。尽管许多研究集中在解决视觉识别任务的神经网络的设计和优化上,但其中大多数缺乏神经生物学上可行的学习规则或决策过程。在这里,我们提出了一个层次化尖峰神经网络(SNN)的大规模模型,该模型将低级内存编码机制与高级决策过程集成在一起,以实时执行视觉分类任务。该模型由Izhikevich神经元和基于电导的突触组成,用于逼真的逼近神经元动力学,具有额外的突触动力学的峰值定时依赖可塑性(STDP)突触学习规则,用于记忆编码,以及用于记忆检索和分类的累加器模型。整个网络由71,026个神经元和大约1.33亿个突触组成,可在单个现成的图形处理单元(GPU)上实时运行。该网络是在支持通用神经形态计算机芯片的公共SNN模拟器上构建的。在100轮随机子采样中,该网络在MNIST上实现了92%的正确分类,这与其他SNN方法可比,并且提供了保守而可靠的性能指标。此外,该模型可以根据心理物理实验正确预测反应时间。由于该方法的可扩展性及其神经生物学的逼真度,可以将当前模型扩展为一种有效的神经形态实现,该形态支持在大脑中发现的更通用的对象识别和决策体系结构。

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