Regression analysis is one of the necessary strategies utilized in statistical inferences, that is employed to estimate the relationship between variables. One way to measure the efficiency of the regression model is to estimate the prediction error, the best model is to have the lowest prediction error. During this paper we are going to estimate the prediction error using bootstrap methods, we will use two different bootstrap methods, Efron’s bootstrap and Banks’ bootstrap methods. They are resampling strategies but in a different manner. We will review them later thoroughly during this paper. We will find that Banks’ bootstrap will be a good choice in most cases
Regression analysis or test is a study of the relationship between one variable, namely a free varia...
Standard errors of parameter estimates are widely used in empirical work. The bootstrap can often pr...
Classical statistical theory ignores model selection in assessing estimation accuracy. Here we consi...
Regression models are the statistical methods that widely used in many fields. The models allow rela...
We conduct a theoretical analysis of the bias of Efron's (1983) "0.632 estimator", and argue from th...
The estimators most widely used to evaluate the prediction error of a non-linear regression model ar...
The construction of a regression model consists of many procedures such as identification of outlier...
Bootstrap methods can be used as an alternative for cross-validation in regression procedures such a...
Finding a well-predicting model is one of the main goals of regression analysis. However, to evaluat...
A model is a statement of reality or its approximation. Most phenomena in the social sciences are ex...
Linear modelling with the objective to predict a future response is ubiquitous in statistical analys...
A bootstrap bias-correction method is applied to statistical inference in the regression model with ...
The introduction of the bootstrap methods by Efron (1979) enables many empirical researches, which w...
Analyzing a linear model is a fundamental topic in statistical inference and has been well-studied. ...
To find out the relationship between two or more variables, regression analysis can be used. The def...
Regression analysis or test is a study of the relationship between one variable, namely a free varia...
Standard errors of parameter estimates are widely used in empirical work. The bootstrap can often pr...
Classical statistical theory ignores model selection in assessing estimation accuracy. Here we consi...
Regression models are the statistical methods that widely used in many fields. The models allow rela...
We conduct a theoretical analysis of the bias of Efron's (1983) "0.632 estimator", and argue from th...
The estimators most widely used to evaluate the prediction error of a non-linear regression model ar...
The construction of a regression model consists of many procedures such as identification of outlier...
Bootstrap methods can be used as an alternative for cross-validation in regression procedures such a...
Finding a well-predicting model is one of the main goals of regression analysis. However, to evaluat...
A model is a statement of reality or its approximation. Most phenomena in the social sciences are ex...
Linear modelling with the objective to predict a future response is ubiquitous in statistical analys...
A bootstrap bias-correction method is applied to statistical inference in the regression model with ...
The introduction of the bootstrap methods by Efron (1979) enables many empirical researches, which w...
Analyzing a linear model is a fundamental topic in statistical inference and has been well-studied. ...
To find out the relationship between two or more variables, regression analysis can be used. The def...
Regression analysis or test is a study of the relationship between one variable, namely a free varia...
Standard errors of parameter estimates are widely used in empirical work. The bootstrap can often pr...
Classical statistical theory ignores model selection in assessing estimation accuracy. Here we consi...