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Effect of t he Number of Samples Used in a Leave-One-Out Covariance Estimator

机译:留一法协方差估计器中使用的样本数量的影响

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摘要

Some algorithms, such as Gaussian Maximum Likelihood require the use of trhe second order statistics, e.g. the covariance matrix, to help characterize the target in addition to the mean. Also, models such as FASSP require the second order statistics of targets to predict the performance of algorithms even through the algorithm may not use the covariance matrix directly. However, many times the number of samples avilable to make a good estimate of the covariance matrix is small. The Leave-One-Out Covariance (LOOC) estimator can be used to estimate t he covariance matrix when the number of samples available is less than the normal minimum required. The normal minimum number of samples needed for a a sample class covariance matrix is p+1 samples for p-dimensional data. For the LOOC estimator, in theory, as few as 3 samples are all that are needed. However, what are the affects of using such a low number in practice? This paper presents the results of an experiment that was conducted to measure what the affect may be in one specific instance. Sometimes as few as 0.1 p samples produce reasonably satisfactory results; other times 0.4p or more samples are needed.
机译:某些算法,例如高斯最大似然法,需要使用二阶统计量,例如协方差矩阵,除了平均值之外,还有助于表征目标。而且,诸如FASSP之类的模型需要目标的二阶统计量才能预测算法的性能,即使算法可能不直接使用协方差矩阵也是如此。但是,很多时候可以用来很好地估计协方差矩阵的样本数量很少。当可用样本数少于所需的正常最小值时,可以使用离开一出方协方差(LOOC)估计器来估计其协方差矩阵。样本类协方差矩阵所需的样本的正常最小数量为p维数据的p + 1个样本。对于LOOC估计器,理论上只需要3个样本。但是,在实践中使用如此低的数字有什么影响?本文介绍了一项实验的结果,该实验旨在衡量在特定情况下可能产生的影响。有时只有0.1 p的样本会产生令人满意的结果。其他时候需要0.4p或更多的样本。

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