Supervised learning with decision margins in pools of spiking neurons

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作者
Charlotte Le Mouel
Kenneth D. Harris
Pierre Yger
机构
[1] Physiology,UCL Institute of Neurology and UCL Department of Neuroscience
[2] and Pharmacology,undefined
[3] Ecole Normale Supérieure,undefined
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Keywords; Supervised learning; Spiking neurons; Tempotron; Support vector machine;
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摘要
Learning to categorise sensory inputs by generalising from a few examples whose category is precisely known is a crucial step for the brain to produce appropriate behavioural responses. At the neuronal level, this may be performed by adaptation of synaptic weights under the influence of a training signal, in order to group spiking patterns impinging on the neuron. Here we describe a framework that allows spiking neurons to perform such “supervised learning”, using principles similar to the Support Vector Machine, a well-established and robust classifier. Using a hinge-loss error function, we show that requesting a margin similar to that of the SVM improves performance on linearly non-separable problems. Moreover, we show that using pools of neurons to discriminate categories can also increase the performance by sharing the load among neurons.
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页码:333 / 344
页数:11
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