The autocorrelation function is a basic tool for time series analysis. The clas- sical estimation is very sensitive to outliers and can lead to misleading results. This thesis deals with robust estimations of the autocorrelation function, which is more resistant to the outliers than the classical estimation. There are presen- ted following approaches: leaving out the outliers from the data, replacement the average with the median, data transformation, the estimation of another coeffici- ent, robust estimation of the partial autocorrelation function or linear regression. The thesis describes the applicability of the presented methods, their advantages and disadvantages and necessary assumptions. All the approaches are compared in simulation ...
Abstract: We discuss the robust estimation of a linear trend if the noise follows an autoregressive ...
The subject of the thesis is the autocorrelation structure of time series. AR(1) process is studied ...
Abstract. A desirable property of an autocovariance estimator is to be robust to the pres-ence of ad...
The autocorrelation function is a basic tool for time series analysis. The clas- sical estimation is...
The classical autocorrelation coefficient estimator in the time series context is very sensitive to ...
The autocorrelation function (acf) and the partial autocorrelation function (pacf) are elementary t...
The importance of working with sufficiently robust methods has been rising in recent years. This gro...
We consider statistical inference in the presence of serial dependence. The main focus is on use of ...
In the classical linear regression model we assume that successive values of the disturbance term ar...
abstract: this paper presents an extension of an idea by kleiner, martin & thomson (1979) to multiva...
1-1. In the analysis of. most time series it is customary to estimate the mean and the trend by fitt...
Abstract We study the problem of robust time series analysis under the standard auto-regressive (AR)...
In the existence of autocorrelation problems, the Ordinary Least Squares (OLS) estimates become inco...
En este trabajo se aborda el problema de la robustez de la función de autocorrelación muestral, y se...
The Ordinary Least Squares (OLS) estimates become inefficient in the presence of autocorrelation pro...
Abstract: We discuss the robust estimation of a linear trend if the noise follows an autoregressive ...
The subject of the thesis is the autocorrelation structure of time series. AR(1) process is studied ...
Abstract. A desirable property of an autocovariance estimator is to be robust to the pres-ence of ad...
The autocorrelation function is a basic tool for time series analysis. The clas- sical estimation is...
The classical autocorrelation coefficient estimator in the time series context is very sensitive to ...
The autocorrelation function (acf) and the partial autocorrelation function (pacf) are elementary t...
The importance of working with sufficiently robust methods has been rising in recent years. This gro...
We consider statistical inference in the presence of serial dependence. The main focus is on use of ...
In the classical linear regression model we assume that successive values of the disturbance term ar...
abstract: this paper presents an extension of an idea by kleiner, martin & thomson (1979) to multiva...
1-1. In the analysis of. most time series it is customary to estimate the mean and the trend by fitt...
Abstract We study the problem of robust time series analysis under the standard auto-regressive (AR)...
In the existence of autocorrelation problems, the Ordinary Least Squares (OLS) estimates become inco...
En este trabajo se aborda el problema de la robustez de la función de autocorrelación muestral, y se...
The Ordinary Least Squares (OLS) estimates become inefficient in the presence of autocorrelation pro...
Abstract: We discuss the robust estimation of a linear trend if the noise follows an autoregressive ...
The subject of the thesis is the autocorrelation structure of time series. AR(1) process is studied ...
Abstract. A desirable property of an autocovariance estimator is to be robust to the pres-ence of ad...