We show boundedness in probability uniformly in sample size of a general M-estimator for multiple linear regression in time series. The positive criterion function for the M-estimator is assumed lower semicontinuous and sufficiently large for large argument. Particular cases are the Huber-skip and quantile regression. Boundedness requires an assumption on the frequency of small regressors. We show that this is satisfied for a variety of deterministic and stochastic regressors, including stationary and random walks regressors. The results are obtained using a detailed analysis of the condition on the regressors combined with some recent martingale results
There is vast literature on M-estimation of linear regression parameters. Most of the papers deal wi...
. In statistical analyses the complexity of a chosen model is often related to the size of available...
Some sufficient conditions to establish the rate of convergence of certain M-estimators in a Gaussia...
The limiting distribution of M-estimators of the regression parameter in linear models is derived un...
AbstractAsymptotics of M-estimators of the regression coefficients in linear models (both scale-vari...
AbstractM-estimation is a widely used technique for statistical inference. In this paper, we study p...
AbstractAsymptotics of M-estimators of the regression coefficients in linear models (both scale-vari...
An approximate M-estimator is defined as a value that minimizes certain random function up to a [var...
Abstract: We study the asymptotic behavior of M-estimates of regression parameters in multiple linea...
In M-estimation problems involving estimands in Banach spaces, the M-estimators, when appropriately ...
AbstractThis paper extends the results of Chen and Wu [1] concerning consistency of M-estimators in ...
Consider the partly Linear model Y-i = X(i)'beta(0)+g(0)(T-i)+e(i), where {((Ti, X(i))}(infinit...
AbstractWe discuss the asymptotic linearization of multivariate M-estimators, when the limit distrib...
In this paper, the constrained M-estimation of the regression coefficients and scatter parameters in...
In statistical analyses the complexity of a chosen model is often related to the size of available d...
There is vast literature on M-estimation of linear regression parameters. Most of the papers deal wi...
. In statistical analyses the complexity of a chosen model is often related to the size of available...
Some sufficient conditions to establish the rate of convergence of certain M-estimators in a Gaussia...
The limiting distribution of M-estimators of the regression parameter in linear models is derived un...
AbstractAsymptotics of M-estimators of the regression coefficients in linear models (both scale-vari...
AbstractM-estimation is a widely used technique for statistical inference. In this paper, we study p...
AbstractAsymptotics of M-estimators of the regression coefficients in linear models (both scale-vari...
An approximate M-estimator is defined as a value that minimizes certain random function up to a [var...
Abstract: We study the asymptotic behavior of M-estimates of regression parameters in multiple linea...
In M-estimation problems involving estimands in Banach spaces, the M-estimators, when appropriately ...
AbstractThis paper extends the results of Chen and Wu [1] concerning consistency of M-estimators in ...
Consider the partly Linear model Y-i = X(i)'beta(0)+g(0)(T-i)+e(i), where {((Ti, X(i))}(infinit...
AbstractWe discuss the asymptotic linearization of multivariate M-estimators, when the limit distrib...
In this paper, the constrained M-estimation of the regression coefficients and scatter parameters in...
In statistical analyses the complexity of a chosen model is often related to the size of available d...
There is vast literature on M-estimation of linear regression parameters. Most of the papers deal wi...
. In statistical analyses the complexity of a chosen model is often related to the size of available...
Some sufficient conditions to establish the rate of convergence of certain M-estimators in a Gaussia...