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Spike encoding for pattern recognition: Comparing cerebellum granular layer encoding and BSA algorithms

机译:Spike编码用于模式识别:比较小脑颗粒层编码和BSA算法

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Spiking neural encoding models allow classification of real world tasks to suit for brain-machine interfaces in addition to serving as internal models. We developed a new spike encoding model inspired from cerebellum granular layer and tested different classification techniques like SVM, Naïve Bayes, MLP for training spiking neural networks to perform pattern recognition tasks on encoded datasets. As a precursor to spiking network-based pattern recognition, in this study, real world datasets were encoded into spike trains. The objective of this study was to encode information from datasets into spiking neuron patterns that were relevant for spiking neural networks and for conventional machine learning algorithms. In this initial study, we present a new approach similar to cerebellum granular layer encoding and compared it with BSA encoding techniques. We have also compared the efficiency of the encoded dataset with different datasets and with standard machine learning algorithms.
机译:尖峰神经编码模型不仅可以用作内部模型,还可以对现实世界中的任务进行分类,以适合脑机接口。我们开发了一个受小脑颗粒层启发的新的峰值编码模型,并测试了SVM,朴素贝叶斯(NaïveBayes),MLP等不同的分类技术,用于训练加标神经网络以对编码数据集执行模式识别任务。作为基于峰值的网络模式识别的先驱,在这项研究中,将真实世界的数据集编码为峰值序列。这项研究的目的是将来自数据集的信息编码为尖峰神经元模式,这些模式与尖峰神经网络和常规机器学习算法相关。在这项初步研究中,我们提出了一种类似于小脑颗粒层编码的新方法,并将其与BSA编码技术进行了比较。我们还比较了编码数据集与不同数据集和标准机器学习算法的效率。

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