Modified Fast Algorithm for the Bandwidth Selection of the Kernel Density Estimation

被引:4
作者
Lapko, A., V [1 ,2 ]
Lapko, V. A. [1 ,2 ]
机构
[1] Russian Acad Sci, Inst Computat Modelling, Siberian Branch, Krasnoyarsk 660036, Russia
[2] Reshetnev Siberian State Univ Sci & Technol, Krasnoyarsk 660037, Russia
关键词
kernel estimation of probability density; fast optimization algorithm; bandwidth selection; antikurtosis coefficient; symmetric probability densities; second derivative of probability density;
D O I
10.3103/S8756699020060102
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
A modification of the fast algorithm for the bandwidth selection of kernel functions in a nonparametric probability density estimate of the Rosenblatt-Parzen type is proposed. Fast algorithms for optimizing kernel estimates of probability densities make it possible to significantly reduce the calculation time when selecting their smoothing parameters (bandwidths) in comparison with the traditional approach, which is especially important when processing large statistical data. The method is based on the analysis of the formula for the optimal calculation of the smoothing parameter of kernel functions and the discovered dependence between the nonlinear functional on the second derivative of the reconstructed probability density and the antikurtosis coefficient. The proposed algorithm for the bandwidth selection provides a decrease in the probability density approximation error in comparison with the traditional approach. The findings are confirmed by the results of computational experiments. Special attention is paid to the dependence of these properties on the amount of initial data.
引用
收藏
页码:566 / 572
页数:7
相关论文
共 15 条
[1]   Spectral-Spatial Methods for Hyperspectral Image Classification. Review [J].
Borzov S.M. ;
Potaturkin O.I. .
Optoelectronics, Instrumentation and Data Processing, 2018, 54 (6) :582-599
[3]   NON-PARAMETRIC ESTIMATION OF A MULTIVARIATE PROBABILITY DENSITY [J].
EPANECHN.VA .
THEORY OF PROBILITY AND ITS APPLICATIONS,USSR, 1969, 14 (01) :153-&
[5]  
Ivnitskii V.A., 1977, COMPLEX SYST
[6]   Integral Estimate from the Square of the Probability Density for a One-Dimensional Random Variable [J].
Lapko, A. V. ;
Lapko, V. A. .
MEASUREMENT TECHNIQUES, 2020, 63 (07) :534-542
[7]   Dependencies Between Histogram Parameters and the Kernel Estimate of the Probability Density of a Multidimensional Random Variable [J].
Lapko, A. V. ;
Lapko, V. A. .
MEASUREMENT TECHNIQUES, 2020, 62 (11) :945-952
[8]   Fast Selection of Blur Coefficients in a Multidimensional Nonparametric Pattern Recognition Algorithm [J].
Lapko, A. V. ;
Lapko, V. A. .
MEASUREMENT TECHNIQUES, 2019, 62 (08) :665-672
[9]   Nonparametric Algorithm of Identification of Classes Corresponding to Single-mode Fragments of the Probability Density of Multidimensional Random Variables [J].
Lapko, A. V. ;
Lapko, V. A. ;
Im, S. T. ;
Tuboltsev, V. P. ;
Avdeenok, V. A. .
OPTOELECTRONICS INSTRUMENTATION AND DATA PROCESSING, 2019, 55 (03) :230-236
[10]   A technique for testing hypotheses for distributions of multidimensional spectral data using a nonparametric pattern recognition algorithm [J].
Lapko, A. V. ;
Lapko, V. A. .
COMPUTER OPTICS, 2019, 43 (02) :238-244