Econometricians generally take for granted that the error terms in the econometric models are generated by distributions having a finite variance. However, since the time of Pareto the existence of error distributions with infinite variance is known. Works of many econometricians, namely, Meyer & Glauber (1964), Fama (1965) and Mandlebroth (1967), on economic data series like prices in financial and commodity markets confirm that infinite variance distributions exist abundantly. The distribution of firms by size, behaviour of speculative prices and various other recent economic phenomena also display similar trends. Further, econometricians generally assume that the disturbance term, which is an influence of innumerably many factors not acc...
AbstractThe least squares residuals from the standard linear model have a variance matrix which is a...
In the classical normal linear regression model, ordinary least squares estimators (OLS) will be con...
The present article considers the problem of consistent estimation in measurement error models. A li...
Econometricians generally take for granted that the error terms in the econometric models are genera...
In this paper the authors present a nonparametric method of estimating the parameters of the linear ...
We consider an L_1 analogue of the least squares estimate or for the parameters of stationary, finit...
This is a theoretical study of the Least Absolute Deviations (LAD) fits. In the first part, fundamen...
A Monte Carlo simulation is used to compare estimation and inference procedures in least absolute va...
While linear regression represents the most fundamental model in current econometrics, the least squ...
Consider the linear model Y = X(beta) + (epsilon), where Y is an n x 1 vector of response variables;...
Algorithm for the exact solution of the problem of estimating the parameters of linear regression mo...
The least absolute deviation or L1 method is a widely known alternative to the classical least squar...
AbstractA semimartingale driven continuous time linear regression model is studied. Assumptions conc...
Least absolute deviations (LAD) estimation of linear time-series models is considered under conditio...
The least squares linear regression estimator is well-known to be highly sensitive to unusual observ...
AbstractThe least squares residuals from the standard linear model have a variance matrix which is a...
In the classical normal linear regression model, ordinary least squares estimators (OLS) will be con...
The present article considers the problem of consistent estimation in measurement error models. A li...
Econometricians generally take for granted that the error terms in the econometric models are genera...
In this paper the authors present a nonparametric method of estimating the parameters of the linear ...
We consider an L_1 analogue of the least squares estimate or for the parameters of stationary, finit...
This is a theoretical study of the Least Absolute Deviations (LAD) fits. In the first part, fundamen...
A Monte Carlo simulation is used to compare estimation and inference procedures in least absolute va...
While linear regression represents the most fundamental model in current econometrics, the least squ...
Consider the linear model Y = X(beta) + (epsilon), where Y is an n x 1 vector of response variables;...
Algorithm for the exact solution of the problem of estimating the parameters of linear regression mo...
The least absolute deviation or L1 method is a widely known alternative to the classical least squar...
AbstractA semimartingale driven continuous time linear regression model is studied. Assumptions conc...
Least absolute deviations (LAD) estimation of linear time-series models is considered under conditio...
The least squares linear regression estimator is well-known to be highly sensitive to unusual observ...
AbstractThe least squares residuals from the standard linear model have a variance matrix which is a...
In the classical normal linear regression model, ordinary least squares estimators (OLS) will be con...
The present article considers the problem of consistent estimation in measurement error models. A li...