Nonparametric pattern recognition algorithm for testing a hypothesis of the independence of random variables
Автор: Zenkov Igor Vladimirovich, Lapko Alexander Vasilievich, Lapko Vasiliy Aleksandrovich, Kiryushina Elena Vasilievna, Vokin Vladimir Nikolaevich
Журнал: Компьютерная оптика @computer-optics
Рубрика: Численные методы и анализ данных
Статья в выпуске: 5 т.45, 2021 года.
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A new method for testing a hypothesis of the independence of multidimensional random variables is proposed. The technique under consideration is based on the use of a nonparametric pattern recognition algorithm that meets a maximum likelihood criterion. In contrast to the traditional formulation of the pattern recognition problem, there is no a priori training sample. The initial information is represented by statistical data, which are made up of the values of a multivariate random variable. The distribution laws of random variables in the classes are estimated according to the initial statistical data for the conditions of their dependence and independence. When selecting optimal bandwidths for nonparametric kernel-type probability density estimates, the minimum standard deviation is used as a criterion. Estimates of the probability of pattern recognition error in the classes are calculated. Based on the minimum value of the estimates of the probabilities of pattern recognition errors, a decision is made on the independence or dependence of the random variables. The technique developed is used in the spectral analysis of remote sensing data.
Testing a hypothesis of the independence of random variables, multidimensional random variables, pattern recognition, nonparametric probability density estimation, bandwidths of kernel functions, kolmogorov-smirnov criterion, spectral analysis of remote sensing data
Короткий адрес: https://sciup.org/140290273
IDR: 140290273 | DOI: 10.18287/2412-6179-CO-871