The sample autocorrelation function is defined by the mean lagged products (LPs) of random observations. It is the inverse Fourier transform of the raw periodogram. Both contain the same information, and the quality of the full-length sample autocorrelation to represent random data is as poor as that of a raw periodogram. The autoregressive (AR) Yule-Walker method uses LP autocorrelation estimates to compute AR parameters as a parametric model for the autocorrelation. The order of the AR model can be taken as the full LP length, or it can be determined with an order selection criterion. However, the autocorrelation function can more accurately be estimated with a general parametric time-series method. This parametric estimate of the autocor...
This paper describes four methods for estimating autocorrelation time and evaluates these methods wi...
International audienceWe are interested in the implications of a linearly autocorrelated driven nois...
Both the simulated white-noise (top left panel) and pink-noise (bottom left panel) time series conta...
The sample autocorrelation function is defined by the mean lagged products (LPs) of random observati...
Abstract—The Yule–Walker (YW) method for autoregressive (AR) estimation uses lagged-product (LP) aut...
AbstractAutoregressive models are important in describing the behaviour of the observed time series....
In the first part of the study, nine estimators of the first-order autoregressive parameter are revi...
The most commonly used method for estimating the time domain parameters of an autoregressive process...
Most economic data are time series in nature and one of the popular methods used to model the time s...
The subject of the thesis is the autocorrelation structure of time series. AR(1) process is studied ...
The most important assumption about time series and econometrics data is stationarity. Therefore, th...
The classical autocorrelation function may not be an effective and informative means in revealing th...
Selecting the correct lag order is necessary in order to avoid model specification errors in autoreg...
In the classical linear regression model we assume that successive values of the disturbance term ar...
Vita.The estimation of autocovariance functions and power spectra from randomly sampled data is a si...
This paper describes four methods for estimating autocorrelation time and evaluates these methods wi...
International audienceWe are interested in the implications of a linearly autocorrelated driven nois...
Both the simulated white-noise (top left panel) and pink-noise (bottom left panel) time series conta...
The sample autocorrelation function is defined by the mean lagged products (LPs) of random observati...
Abstract—The Yule–Walker (YW) method for autoregressive (AR) estimation uses lagged-product (LP) aut...
AbstractAutoregressive models are important in describing the behaviour of the observed time series....
In the first part of the study, nine estimators of the first-order autoregressive parameter are revi...
The most commonly used method for estimating the time domain parameters of an autoregressive process...
Most economic data are time series in nature and one of the popular methods used to model the time s...
The subject of the thesis is the autocorrelation structure of time series. AR(1) process is studied ...
The most important assumption about time series and econometrics data is stationarity. Therefore, th...
The classical autocorrelation function may not be an effective and informative means in revealing th...
Selecting the correct lag order is necessary in order to avoid model specification errors in autoreg...
In the classical linear regression model we assume that successive values of the disturbance term ar...
Vita.The estimation of autocovariance functions and power spectra from randomly sampled data is a si...
This paper describes four methods for estimating autocorrelation time and evaluates these methods wi...
International audienceWe are interested in the implications of a linearly autocorrelated driven nois...
Both the simulated white-noise (top left panel) and pink-noise (bottom left panel) time series conta...