In regression and multivariate analysis, the presence of outliers in the dataset can strongly distort classical estimations and lead to unreliable results. To deal with this, several robust-to-outliers methods have been proposed in the statistical literature. In Stata, some of these methods are available through the commands rreg and qreg for robust regression and hadimvo for multivariate outliers identification. Unfortunately, these methods only resist some specific types of outliers and turn out to be ineffective under alternative scenarios. In this presentation, after illustrating the drawbacks of the available methods, we present more effective robust estimators that we implemented in Stata. We also present a graphical tool that allows ...
We study the application of bootstrap procedures to the problem of constructing confidence intervals...
This study presents a method for the detection of outliers based on the Variable Precision Rough Set...
In the context of multivariate linear regression (MLR) models, it is well known that commonly employ...
Let $Y\in\R^n$ be a random vector with mean $s$ and covariance matrix $\sigma^2P_n\tra{P_n}$ where $...
AbstractIn this paper, we study the problem of nonparametric estimation of the mean and variance fun...
[Δε διατίθεται περίληψη / no abstract available][Δε διατίθεται περίληψη / no abstract available
One of the most important problem of misspecification in the probit model is the correlation between ...
This paper examines improved regression methods for the linear multivariable measurement error model...
This paper proposes a new estimator called Two stage K-L estimator by combining these two estimators...
International audienceThe analysis of spectra data deduced from proteomics studies in biology or inf...
In time series regressions with nonparametrically autocorrelated errors, it is now standard empirica...
In this talk I consider sequential Monte Carlo (SMC) methods for hidden Markov models. In the scenar...
International audienceIn this article we suggest a new statistical approach considering survival het...
Testing for the significance of a subset of regression coefficients in a linear model, a staple of s...
International audienceIn this paper, we study the problem of nonparametric estimation of the mean an...
We study the application of bootstrap procedures to the problem of constructing confidence intervals...
This study presents a method for the detection of outliers based on the Variable Precision Rough Set...
In the context of multivariate linear regression (MLR) models, it is well known that commonly employ...
Let $Y\in\R^n$ be a random vector with mean $s$ and covariance matrix $\sigma^2P_n\tra{P_n}$ where $...
AbstractIn this paper, we study the problem of nonparametric estimation of the mean and variance fun...
[Δε διατίθεται περίληψη / no abstract available][Δε διατίθεται περίληψη / no abstract available
One of the most important problem of misspecification in the probit model is the correlation between ...
This paper examines improved regression methods for the linear multivariable measurement error model...
This paper proposes a new estimator called Two stage K-L estimator by combining these two estimators...
International audienceThe analysis of spectra data deduced from proteomics studies in biology or inf...
In time series regressions with nonparametrically autocorrelated errors, it is now standard empirica...
In this talk I consider sequential Monte Carlo (SMC) methods for hidden Markov models. In the scenar...
International audienceIn this article we suggest a new statistical approach considering survival het...
Testing for the significance of a subset of regression coefficients in a linear model, a staple of s...
International audienceIn this paper, we study the problem of nonparametric estimation of the mean an...
We study the application of bootstrap procedures to the problem of constructing confidence intervals...
This study presents a method for the detection of outliers based on the Variable Precision Rough Set...
In the context of multivariate linear regression (MLR) models, it is well known that commonly employ...