Modified estimation of the Pearson correlation coefficient: normalization of random variables according to the distribution mode
https://doi.org/10.32446/0368-1025it.2026-3-32-39
Abstract
The problems of structural analysis of statistical data and construction of linear models of stochastic dependencies under a priori uncertainty are considered. A modified estimate of the correlation coefficient is proposed and investigated, which forms the basis for the structural analysis of statistical data. Unlike the traditional Pearson correlation coefficient, the modified estimator is based on normalizing random variables by the modes of their probability densities. To find modes of distribution laws, kernel estimates of probability densities of the random variables being analyzed are used. The choice of the blurriness coefficients for the kernel functions of nonparametric probability density estimates is based on the condition of maximizing the likelihood function. An alternative approach to choosing blurriness coefficients is to minimize the standard deviations of nonparametric probability density estimates. Estimates of traditional and modified correlation coefficients are examined. Their application in constructing linear approximations of statistical relationships is discussed. For this purpose, remote sensing data from a test forest area damaged by the Siberian silk moth was used. Two sets of spectral feature pairs were identified, differing in the large and small values of the correlation coefficient estimates under consideration. The correlation coefficient estimates were compared, and the corresponding nonparametric probability density estimates for the spectral features were analyzed. In the analysis of errors in linear approximations of dependencies between spectral features, the conditions for the advantage of traditional and modified estimates of correlation coefficients were determined. The obtained results can be used in the synthesis of algorithms for structural analysis of remote sensing data of natural objects.
About the Authors
A. V. LapkoRussian Federation
Aleksandr V. Lapko, Professor; D. Sc. (Engineering), Professor, Chief Research Officer
660037, Krasnoyarsk, Krasnoyarsky Rabochy Av., 31
660036, Krasnoyarsk, Akademgorodok, 50, building 44
V. A. Lapko
Russian Federation
Vasiliy A. Lapko, Head of Department; D. Sc. (Engineering), Professor, Leading Researcher
660037, Krasnoyarsk, Krasnoyarsky Rabochy Av., 31
660036, Krasnoyarsk, Akademgorodok, 50, building 44
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Review
For citations:
Lapko A.V., Lapko V.A. Modified estimation of the Pearson correlation coefficient: normalization of random variables according to the distribution mode. Izmeritel`naya Tekhnika. 2026;75(3):32-39. (In Russ.) https://doi.org/10.32446/0368-1025it.2026-3-32-39
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