The discrete wavelet transform (DWT) is becoming very widely used in the analysis of discrete time stochastic processes. In this paper we explore the maximal overlap discrete wavelet transform (MODWT) which carries out the same filtering steps as the ordinary DWT but does not subsample by 2, and is well defined for any sample size. We address the problem of examining the wavelet auto and cross-correlation structure between wavelet coefficients at different scales of a time series. We construct an estimator of this quantity based on wavelets coefficients. The asymptotic distribution of this estimator is derived for a wide class of stochastics processes.A simulation experiment is reported which demonstrates how the cross-correlation is spr...
The thesis deals with a brief compilation of the theory of Fourier transform, linear filtration and ...
In this paper the core objective is to apply discrete wavelet transform and maximal overlap discrete...
We consider the problem of estimating the parameters for a stochastic process using a time series co...
The discrete wavelet transform (DWT) is becoming very widely used in the analysis of discrete time s...
ABSTRACT The estimation of the correlation between independent data sets using classical estimators,...
This thesis deals with the applications of wavelet theory to time series data. We first focus on sta...
In the paper we review stochastic properties of wavelet coefficients for time series indexed by cont...
This paper develops a new procedure to test the changes in the autocorrelation structure of an AR(1)...
Statistical studies that consider multiscale relationships among several variables use wavelet corre...
The paper considers some of the issues emerging from the discrete wavelet analysis of popular bivari...
The paper deals with significance testing of time series co-movement measured via wavelet analysis, ...
This thesis deals with multiscale modelling of the covariance pattern of discrete time series with t...
Various wavelet-based estimators of self-similarity or long-range dependence scaling exponent are st...
Multiscale analysis of univariate time series has appeared in the literature at an ever increasing r...
Summary. Discrete wavelet transforms (DWTs) are mathematical tools that are useful for analyzing geo...
The thesis deals with a brief compilation of the theory of Fourier transform, linear filtration and ...
In this paper the core objective is to apply discrete wavelet transform and maximal overlap discrete...
We consider the problem of estimating the parameters for a stochastic process using a time series co...
The discrete wavelet transform (DWT) is becoming very widely used in the analysis of discrete time s...
ABSTRACT The estimation of the correlation between independent data sets using classical estimators,...
This thesis deals with the applications of wavelet theory to time series data. We first focus on sta...
In the paper we review stochastic properties of wavelet coefficients for time series indexed by cont...
This paper develops a new procedure to test the changes in the autocorrelation structure of an AR(1)...
Statistical studies that consider multiscale relationships among several variables use wavelet corre...
The paper considers some of the issues emerging from the discrete wavelet analysis of popular bivari...
The paper deals with significance testing of time series co-movement measured via wavelet analysis, ...
This thesis deals with multiscale modelling of the covariance pattern of discrete time series with t...
Various wavelet-based estimators of self-similarity or long-range dependence scaling exponent are st...
Multiscale analysis of univariate time series has appeared in the literature at an ever increasing r...
Summary. Discrete wavelet transforms (DWTs) are mathematical tools that are useful for analyzing geo...
The thesis deals with a brief compilation of the theory of Fourier transform, linear filtration and ...
In this paper the core objective is to apply discrete wavelet transform and maximal overlap discrete...
We consider the problem of estimating the parameters for a stochastic process using a time series co...