The innovations in AR(1) models in time series have primarily been assumed to have a normal or long-tailed distributions. We consider short-tailed distributions (kurtosis less than 3) and derive modified maximum likelihood (MML) estimators. We show that the MML estimator of 0 is considerably more efficient than the commonly used least squares estimator and is also robust. This paper is essentially the first to achieve robustness to inliers and to various forms of short-tailedness in time series analysis
This paper investigates Hill's estimator for the tail index of an ARMA model with i.i.d. residuals. ...
2008 We propose a new result that simplifies the evaluation of the marginal likelihood in Gaussian S...
The application of maximum likelihood estimation is not well studied for stochastic short rate model...
Symmetric short-tailed distributions do indeed occur in practice but have not received much attentio...
AR(1) models in time series with nonnormal errors represented by two families of distributions: (i) ...
Analysis of a large number of independent replications from short, AR(1) type time series is conside...
In recent years, it is seen in many time series applications that innovations are non-normal. In thi...
In classical autoregressive models, it is assumed that the disturbances are normally distributed and...
Analysis of a large number of independent replications from short, first order autoregressive type t...
Salient features of a family of short-tailed symmetric distributions, introduced recently by Tiku an...
In this paper, we consider the autoregressive models where the error term is non-normal; specificall...
Abstract—Maximum-likelihood (ML) theory presents an ele-gant asymptotic solution for the estimation ...
Simple methods like exponential smoothing are very popular for forecasting univariate time series. T...
This thesis proposes the global self-weighted least absolute deviation (LAD) estimator for finite an...
The application of maximum likelihood estimation is not well studied for stochastic short rate model...
This paper investigates Hill's estimator for the tail index of an ARMA model with i.i.d. residuals. ...
2008 We propose a new result that simplifies the evaluation of the marginal likelihood in Gaussian S...
The application of maximum likelihood estimation is not well studied for stochastic short rate model...
Symmetric short-tailed distributions do indeed occur in practice but have not received much attentio...
AR(1) models in time series with nonnormal errors represented by two families of distributions: (i) ...
Analysis of a large number of independent replications from short, AR(1) type time series is conside...
In recent years, it is seen in many time series applications that innovations are non-normal. In thi...
In classical autoregressive models, it is assumed that the disturbances are normally distributed and...
Analysis of a large number of independent replications from short, first order autoregressive type t...
Salient features of a family of short-tailed symmetric distributions, introduced recently by Tiku an...
In this paper, we consider the autoregressive models where the error term is non-normal; specificall...
Abstract—Maximum-likelihood (ML) theory presents an ele-gant asymptotic solution for the estimation ...
Simple methods like exponential smoothing are very popular for forecasting univariate time series. T...
This thesis proposes the global self-weighted least absolute deviation (LAD) estimator for finite an...
The application of maximum likelihood estimation is not well studied for stochastic short rate model...
This paper investigates Hill's estimator for the tail index of an ARMA model with i.i.d. residuals. ...
2008 We propose a new result that simplifies the evaluation of the marginal likelihood in Gaussian S...
The application of maximum likelihood estimation is not well studied for stochastic short rate model...