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Bayesian Optimization of Spiking Neural Network Parameters to Solving the Time Series Classification Task

机译:跳跃神经网络参数的贝叶斯优化解决时间序列分类任务

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This study contains the application of spiking neural networks to time series classification task. Because of the lack of mathematical framework for such biologically inspired neural networks, this study tries to solve hyperparameter optimization task with the help of surrogate models. To define classification task quality metric that measures separability index based on Fisher's discriminant ratio is used.
机译:本研究包含尖刺神经网络的应用到时间序列分类任务。 由于这种生物启发性神经网络缺乏数学框架,这项研究试图利用代理模型的帮助解决了脱位计优化任务。 要定义基于Fisher判别比率测量可分离索引的分类任务质量指标。

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