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Spike classification with multivariate t-distribution mixture model via improved Expectation-Maximization algorithm

机译:改进的期望最大化算法利用多元t分布混合模型对穗进行分类

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Recent research has developed various methods in automatic spike classification, including Expectation-Maximization (EM) clustering based on multivariate t-distribution mixture models. In our study, we improved the EM iterative algorithm with a significantly better ascent gradient in the high-dimensional feature space of spikes. Our simulations showed that this improvement of the EM algorithm could reduce the computation time with no significant change in classification error. Applications of this new algorithm yielded better computation cost and a more robust performance in real experimental spike data analysis.
机译:最近的研究开发了多种自动峰值分类的方法,包括基于多元t分布混合模型的期望最大化(EM)聚类。在我们的研究中,我们改进了EM迭代算法,在尖峰的高维特征空间中使用了明显更好的上升梯度。我们的仿真表明,EM算法的这一改进可以减少计算时间,而分类错误不会有明显变化。在实际的实验尖峰数据分析中,这种新算法的应用产生了更好的计算成本和更强大的性能。

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