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Prospects for Multiple Reductions in Test Samples with a Multivariate,Multicriteria, The Neural Network Statistical Analysis of Biometric Data

机译:具有多变量,多标准,生物特征数据的神经网络统计分析的样品的多次还原的前景

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It is shown that the classical Chi-Square test has insufficient capacity for efficient processing of biometric data. It is shown that there is a possibility to increase the power of statistical processing through the use of several well-known statistical tests, through the neural network combining their private decisions. Contains tables of formulas promising statistical criteria that complement already used statistical tests. Considered the influence of quantization errors caused by the small amount of experience in the test sample. Proposed to raise the reliability of the estimates due to the digital smoothing of histograms with uniform quantization step. Shows the tables and nomograms to assess the reduction in the probability of errors of the first and second order transition to multivariate statistical analysis of biometric data.
机译:结果表明,经典的卡方检验没有足够的能力有效处理生物特征数据。结果表明,通过使用几种众所周知的统计检验,通过神经网络结合其私人决策,可以提高统计处理的能力。包含有希望的统计标准的公式表,可以补充已经使用的统计检验。考虑了测试样本中少量经验导致的量化误差的影响。由于具有均匀量化步长的直方图的数字平滑,建议提高估计的可靠性。显示表格和列线图,以评估从一阶和二阶转变为生物特征数据的多元统计分析的错误概率的降低。

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