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Neurochaos Inspired Hybrid Machine Learning Architecture for Classification

机译:Neurochaos启发的混合机器学习分类体系

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Neuromorphic computing systems are biologically inspired with an aim to understand the rich structure and behaviour of biological neural networks so that novel learning architectures can be designed in both software and hardware. Traditional machine learning and deep neural network architectures are only weakly inspired from the human brain. In this work, we propose a novel ‘neurochaos’ inspired hybrid machine learning architecture for classification. Specifically, we extract four ‘neurochaos’ features – firing time, firing rate, energy and entropy of the chaotic neural firing from the neurons in the ChaosNet architecture (which we have recently proposed). These are used to train a Support Vector Machine linear classifier. Such a hybrid approach yields superior performance in the low training sample regime on synthetically generated and real-world datasets. Our proposed method could be viewed as a novel application of chaos as a kernel trick and has the potential for combining with other machine learning algorithms.
机译:神经形态计算系统受到生物学启发,旨在了解生物神经网络的丰富结构和行为,以便可以在软件和硬件中设计新颖的学习体系结构。传统的机器学习和深度神经网络体系结构仅受人脑的启发很小。在这项工作中,我们提出了一种新颖的“ neurochaos”启发式混合机器学习架构进行分类。具体来说,我们从ChaosNet体系结构(我们最近提出)中提取了四个“神经衰弱”特征-激发时间,激发速率,能量和混沌神经激发的熵。这些用于训练支持向量机线性分类器。这种混合方法在低训练样本条件下对合成生成的数据集和实际数据集产生了卓越的性能。我们提出的方法可以看作是混沌作为内核技巧的一种新颖应用,并且有可能与其他机器学习算法结合。

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