For autoregressive moving average (ARMA) models with infinite variance innovations, quasi-likelihood-based estimators (such as Whittle estimators) suffer from complex asymptotic distributions depending on unknown tail indices. This makes statistical inference for such models difficult. In contrast, the least absolute deviations estimators (LADE) are more appealing in dealing with heavy tailed processes. In this paper, we propose a weighted least absolute deviations estimator (WLADE) for ARMA models. We show that the proposed WLADE is asymptotically normal, is unbiased, and has the standard root-n convergence rate even when the variance of innovations is infinity. This paves the way for statistical inference based on asymptotic normality for...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
An approximate maximum-likelihood estimator is derived for ARMA (autoregressive moving-average) proc...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
For autoregressive moving average (ARMA) models with infinite variance innovations, quasi-likelihood...
For autoregressive moving average (ARMA) models with infinite variance innovations, quasi-likelihood...
For autoregressive moving average (ARMA) models with infinite variance innovations, quasi-likelihood...
For autoregressive moving average (ARMA) models with infinite variance innovations, quasi-likelihood...
For autoregressive and moving-average (ARMA) models with infinite variance innovations, quasi-likeli...
This article develops a systematic procedure of statistical inference for the auto-regressive moving...
How to undertake statistical inference for infinite variance autoregressive models has been a long-s...
How to undertake statistical inference for infinite variance autoregressive models has been a long-s...
We consider two estimation procedures, Gauss-Newton and M-estimation, for the parameters of an ARMA ...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
An approximate maximum-likelihood estimator is derived for ARMA (autoregressive moving-average) proc...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
For autoregressive moving average (ARMA) models with infinite variance innovations, quasi-likelihood...
For autoregressive moving average (ARMA) models with infinite variance innovations, quasi-likelihood...
For autoregressive moving average (ARMA) models with infinite variance innovations, quasi-likelihood...
For autoregressive moving average (ARMA) models with infinite variance innovations, quasi-likelihood...
For autoregressive and moving-average (ARMA) models with infinite variance innovations, quasi-likeli...
This article develops a systematic procedure of statistical inference for the auto-regressive moving...
How to undertake statistical inference for infinite variance autoregressive models has been a long-s...
How to undertake statistical inference for infinite variance autoregressive models has been a long-s...
We consider two estimation procedures, Gauss-Newton and M-estimation, for the parameters of an ARMA ...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
An approximate maximum-likelihood estimator is derived for ARMA (autoregressive moving-average) proc...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...