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SPIKE SORTING VIA MULTI CLUSTER FEATURE SELECTION

机译:通过多集群功能选择进行排序

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摘要

Having the ability to study the activity of single neurons will facilitate studies in many areas including cognitive sciences and brain computer interface applications. Due to the fact that every neuron has it's own unique spike waveform, by applying spike-sorting methods, one can separate neurons based on their associated spike. Spike sorting is an unsupervised learning problem in the realm of data mining and machine learning. In this study, a new method that will improve the accuracy of spike sorting in comparison to existing methods has been introduced. This method, which is named Multi Cluster Feature Selection (MCFS), will designate a reduced number of features from the original data set that will best differentiate the existing clusters through solving a Lasso optimization problem. MCFS, was also applied to data obtained from multi-channel recordings on a rat's brain. With MCFS, each channel was studied and neurons in each channel were sorted with an improved rate in comparison to conventional methods such as PCA.
机译:具有研究单个神经元活动的能力将促进许多领域的研究,包括认知科学和脑计算机接口应用程序。由于每个神经元都有其自己独特的尖峰波形,因此通过应用尖峰分类方法,可以根据神经元的相关尖峰来分离神经元。峰值排序是数据挖掘和机器学习领域中的无监督学习问题。在这项研究中,已经介绍了一种新方法,与现有方法相比,它将提高尖峰分选的准确性。此方法称为多聚类特征选择(MCFS),它将从原始数据集中指定数量减少的特征,这些特征将通过解决套索优化问题来最好地区分现有聚类。 MCFS还应用于从大鼠大脑多通道录音获得的数据。与传统方法(例如PCA)相比,使用MCFS对每个通道进行了研究,并对每个通道中的神经元进行了排序。

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