Tests based on heteroskedasticity robust standard errors are an important technique in econometric practice. Choosing the right critical value, however, is not simple at all: Conventional critical values based on asymptotics often lead to severe size distortions; and so do existing adjustments including the bootstrap. To avoid these issues, we suggest to use smallest size-controlling critical values, the generic existence of which we prove in this article for the commonly used test statistics. Furthermore, sufficient and often also necessary conditions for their existence are given that are easy to check. Granted their existence, these critical values are the canonical choice: larger critical values result in unnecessary power loss, whereas...
In this paper, we introduce a set of critical values for unit root tests that are robust in the pres...
This article proposes new unit root tests for panels where the errors may be not only serial and/or ...
We complement the theory developed in Preinerstorfer and Pötscher (2016) with further finite sample ...
Tests based on heteroskedasticity robust standard errors are an important technique in econometric p...
Tests based on heteroskedasticity robust standard errors are an important technique in econometric p...
Tests based on heteroskedasticity robust standard errors are an important technique in econometric p...
International audienceIn this paper, we suggest two heteroscedasticity tests that require little kno...
International audienceIn this paper, we suggest two heteroscedasticity tests that require little kno...
International audienceIn this paper, we suggest two heteroscedasticity tests that require little kno...
International audienceIn this paper, we suggest two heteroscedasticity tests that require little kno...
Using the power kernels of Phillips, Sun, and Jin (2006, 2007), we examine the large sample asymptot...
We complement the theory developed in Preinerstorfer and Pötscher (2016) with further finite sample ...
We complement the theory developed in Preinerstorfer and Pötscher (2016) with further finite sample ...
Using the power kernels of Phillips, Sun and Jin (2006, 2007), we examine the large sample asymptoti...
Using the power kernels of Phillips, Sun and Jin (2006, 2007), we examine the large sample asymptoti...
In this paper, we introduce a set of critical values for unit root tests that are robust in the pres...
This article proposes new unit root tests for panels where the errors may be not only serial and/or ...
We complement the theory developed in Preinerstorfer and Pötscher (2016) with further finite sample ...
Tests based on heteroskedasticity robust standard errors are an important technique in econometric p...
Tests based on heteroskedasticity robust standard errors are an important technique in econometric p...
Tests based on heteroskedasticity robust standard errors are an important technique in econometric p...
International audienceIn this paper, we suggest two heteroscedasticity tests that require little kno...
International audienceIn this paper, we suggest two heteroscedasticity tests that require little kno...
International audienceIn this paper, we suggest two heteroscedasticity tests that require little kno...
International audienceIn this paper, we suggest two heteroscedasticity tests that require little kno...
Using the power kernels of Phillips, Sun, and Jin (2006, 2007), we examine the large sample asymptot...
We complement the theory developed in Preinerstorfer and Pötscher (2016) with further finite sample ...
We complement the theory developed in Preinerstorfer and Pötscher (2016) with further finite sample ...
Using the power kernels of Phillips, Sun and Jin (2006, 2007), we examine the large sample asymptoti...
Using the power kernels of Phillips, Sun and Jin (2006, 2007), we examine the large sample asymptoti...
In this paper, we introduce a set of critical values for unit root tests that are robust in the pres...
This article proposes new unit root tests for panels where the errors may be not only serial and/or ...
We complement the theory developed in Preinerstorfer and Pötscher (2016) with further finite sample ...