Statistical Modeling Using Local Gaussian Approximation (Enhanced Edition) Statistical Modeling Using Local Gaussian Approximation (Enhanced Edition)

Statistical Modeling Using Local Gaussian Approximation (Enhanced Edition‪)‬

Dag Tjostheim y otros
    • USD 129.99
    • USD 129.99

Descripción editorial

Statistical Modeling using Local Gaussian Approximation extends powerful characteristics of the Gaussian distribution, perhaps, the most well-known and most used distribution in statistics, to a large class of non-Gaussian and nonlinear situations through local approximation. This extension enables the reader to follow new methods in assessing dependence and conditional dependence, in estimating probability and spectral density functions, and in discrimination. Chapters in this release cover Parametric, nonparametric, locally parametric, Dependence, Local Gaussian correlation and dependence, Local Gaussian correlation and the copula, Applications in finance, and more.

Additional chapters explores Measuring dependence and testing for independence, Time series dependence and spectral analysis, Multivariate density estimation, Conditional density estimation, The local Gaussian partial correlation, Regression and conditional regression quantiles, and a A local Gaussian Fisher discriminant. Reviews local dependence modeling with applications to time series and finance markets Introduces new techniques for density estimation, conditional density estimation, and tests of conditional independence with applications in economics Evaluates local spectral analysis, discovering hidden frequencies in extremes and hidden phase differences Integrates textual content with three useful R packages

GÉNERO
Negocios y finanzas personales
PUBLICADO
2021
5 de octubre
IDIOMA
EN
Inglés
EXTENSIÓN
458
Páginas
EDITORIAL
Elsevier Science
VENDEDOR
Elsevier Ltd.
TAMAÑO
36.8
MB