Abstract:
The properties of a new method for hypothesis testing of the independence of random variables based on the use of a nonparametric pattern recognition algorithm corresponding to the maximum likelihood criterion are considered. The estimation of the distribution laws in classes is carried out according to the initial statistical data under the assumption of independence and dependence of the analyzed random variables. Under these conditions, estimates of the probabilities of pattern recognition errors in classes are calculated. According to their minimum value, a decision is made on the independence or dependence of random variables. The results of the proposed method are compared with the Pearson criterion and the Pearson, Spearman and Kendall correlation coefficients. When implementing the Pearson criterion, the formula for optimal discretization of the range of values of a two-dimensional random variable is used. Their effectiveness in complicating the dependence between random variables and changing the volume of initial statistical data is studied by the method of computational experiment.
Keywords:
hypothesis testing of the independence of random variables, two-dimensional random variables, nonparametric pattern recognition algorithm, kernel probability density estimation, Pearson criterion, dependent random variables, Pearson, Spearman and Kendall correlation coefficients.
Citation:
A. V. Lapko, А. L. Vasily, A. V. Bakhtina, “Comparison of the methodology for hypothesis testing of the independence of two-dimensional random variables based on a nonparametric classifier”, Artificial Intelligence and Decision Making, 2022, no. 1, 45–56; Scientific and Technical Information Processing, 50:6 (2023), 572–581
\Bibitem{LapVasBak22}
\by A.~V.~Lapko, А.~L.~Vasily, A.~V.~Bakhtina
\paper Comparison of the methodology for hypothesis testing of the independence of two-dimensional random variables based on a nonparametric classifier
\jour Artificial Intelligence and Decision Making
\yr 2022
\issue 1
\pages 45--56
\mathnet{http://mi.mathnet.ru/iipr57}
\crossref{https://doi.org/10.14357/20718594220105}
\elib{https://elibrary.ru/item.asp?id=48140573}
\transl
\jour Scientific and Technical Information Processing
\yr 2023
\vol 50
\issue 6
\pages 572--581
\crossref{https://doi.org/10.3103/S0147688223060084}
Linking options:
https://www.mathnet.ru/eng/iipr57
https://www.mathnet.ru/eng/iipr/y2022/i1/p45
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