By combining two alternative formulations of a test statistic with two alternative resamplingschemes we obtain four different bootstrap tests. In the context of static linear regression modelstwo of these are shown to have serious size and power problems, whereas the remaining two areadequate and in fact equivalent. The equivalence between the two valid implementations is shown tobreak down in dynamic regression models. Then the procedure based on the test statistic approachperforms best, at least in the AR(l)-model. Similar finite-sample phenomena are illustrated in theARMA(l,l)-model through a small-scale Monte Carlo study and an empirical example
This article proposes goodness-of-fit tests for dynamic regression models, where regressors are allo...
This paper utilizes the bootstrap to construct tests using the measures for goodness-of-fit for nonn...
Abstract This paper concerns statistical tests for simple structures such as parametric models, lowe...
The bootstrap is a computationally intensive data analysis technique. It is particularly useful for ...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
The construction of bootstrap hypothesis tests can differ from that of bootstrap confidence interval...
The paper investigates how the particular choice of residuals used in a bootstrap-based testing proc...
We will study here different resampling procedures for creating confidence sets in linear models. A ...
This paper concerns statistical tests for simple structures such as parametric models, lower order m...
This article considers tests for parameter stability over time in general econometric models, possib...
AbstractBootstrap is a resampling procedure drawn from an original sample data with replacement allo...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We use Monte Carlo methods to study the properties of the bootstrap Breusch-Godfrey test for autocor...
This paper empirically and systematically assessed the performance of bootstrap resampling procedure...
This article proposes goodness-of-fit tests for dynamic regression models, where regressors are allo...
This paper utilizes the bootstrap to construct tests using the measures for goodness-of-fit for nonn...
Abstract This paper concerns statistical tests for simple structures such as parametric models, lowe...
The bootstrap is a computationally intensive data analysis technique. It is particularly useful for ...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
The construction of bootstrap hypothesis tests can differ from that of bootstrap confidence interval...
The paper investigates how the particular choice of residuals used in a bootstrap-based testing proc...
We will study here different resampling procedures for creating confidence sets in linear models. A ...
This paper concerns statistical tests for simple structures such as parametric models, lower order m...
This article considers tests for parameter stability over time in general econometric models, possib...
AbstractBootstrap is a resampling procedure drawn from an original sample data with replacement allo...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We propose a wild bootstrap procedure for linear regression models estimated by instrumental variabl...
We use Monte Carlo methods to study the properties of the bootstrap Breusch-Godfrey test for autocor...
This paper empirically and systematically assessed the performance of bootstrap resampling procedure...
This article proposes goodness-of-fit tests for dynamic regression models, where regressors are allo...
This paper utilizes the bootstrap to construct tests using the measures for goodness-of-fit for nonn...
Abstract This paper concerns statistical tests for simple structures such as parametric models, lowe...