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Spike Train Correlation Visualization

机译:尖峰列车相关性可视化

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The current ability to record neural activity within the brains of mammals has led to the production of a large body of experimental data. The analysis and comprehension of this data is key to the understanding of many basic brains functions, for example learning and memory. The main constituent of this data is multi-dimensional spike train recordings. As the analysis of these datasets, by traditional means, becomes more complex and time consuming the need for better methods of data analysis increases. This paper presents an innovative method for analysis of the relationships within large multi-dimensional spike train datasets. This method, called the 'Correlation Grid,' is based on the Information Visualisation principles; overview the data, filter and zoom the data and obtain details-on-demand [1]. The features of the Correlation Grid are described, including filtering and statistical sorting methods.
机译:目前在哺乳动物大脑内记录神经活动的能力导致生产大量的实验数据。这种数据的分析和理解是对许多基本大脑函数的理解的关键,例如学习和记忆。该数据的主要组成部分是多维尖峰列车录制。由于通过传统方法对这些数据集进行分析,变得更复杂,消耗更好的数据分析方法的需求增加。本文介绍了一种创新方法,用于分析大型多维尖峰列车数据集内的关系。这种称为“相关网格”的方法基于信息可视化原则;概述数据,过滤器和缩放数据并获取按需详细信息[1]。描述相关网格的特征,包括过滤和统计分选方法。

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