We make three contributions to using the variance ratio statistic at large horizons. Allowing for general heteroscedasticity in the data, we obtain the asymptotic distribution of the statistic when the horizon k is increasing with the sample size n but at a slower rate so that k/n¨0. The test is shown to be consistent against a variety of relevant mean reverting alternatives when k/n¨0. This is in contrast to the case when k/n¨ƒÂ>0, where the statistic has been recently shown to be inconsistent against such alternatives. Secondly, we provide and justify a simple power transformation of the statistic which yields almost perfectly normally distributed statistics in finite samples, solving the well known right skewness problem. Thirdly, we pro...
We develop some properties on the autocorrelation of the k-period returns for the general mean rever...
We propose a new way of testing the mean-variance efficiency of well-diversified portfolios on large...
Using the power kernels of Phillips, Sun and Jin (2006, 2007), we examine the large sample asymptoti...
We make three contributions to using the variance ratio statistic at large horizons. Allowing for ge...
The variance ratio test statistic, which is based on k-period differences of the data, is commonly u...
This paper reviews the recent developments in the field of the variance-ratio (VR) tests of the rand...
We propose several multivariate variance ratio statistics for “testing” the weak form Efficient Mark...
Abstract: The variance ratio test statistic, which is based on k-period differences of the data, is ...
This article extends and generalizes the variance-ratio (VR) statistic by employing an estimator of ...
We reconsider a statistic introduced in Wornowizki et al. (2016) allowing to test the stationarity ...
We study the asymptotic distribution of the sample standardized spectral distribution function when ...
We develop some properties on the autocorrelation of the k-period returns for the gen-eral mean reve...
This is the published version, also available here: http://dx.doi.org/10.1214/11-AAP801.In this pape...
We propose several multivariate variance ratio statistics. We derive the asymptotic distribution of ...
The asymptotic relative efficiency (ARE) of the rounded sample median M[subscript][epsilon] with res...
We develop some properties on the autocorrelation of the k-period returns for the general mean rever...
We propose a new way of testing the mean-variance efficiency of well-diversified portfolios on large...
Using the power kernels of Phillips, Sun and Jin (2006, 2007), we examine the large sample asymptoti...
We make three contributions to using the variance ratio statistic at large horizons. Allowing for ge...
The variance ratio test statistic, which is based on k-period differences of the data, is commonly u...
This paper reviews the recent developments in the field of the variance-ratio (VR) tests of the rand...
We propose several multivariate variance ratio statistics for “testing” the weak form Efficient Mark...
Abstract: The variance ratio test statistic, which is based on k-period differences of the data, is ...
This article extends and generalizes the variance-ratio (VR) statistic by employing an estimator of ...
We reconsider a statistic introduced in Wornowizki et al. (2016) allowing to test the stationarity ...
We study the asymptotic distribution of the sample standardized spectral distribution function when ...
We develop some properties on the autocorrelation of the k-period returns for the gen-eral mean reve...
This is the published version, also available here: http://dx.doi.org/10.1214/11-AAP801.In this pape...
We propose several multivariate variance ratio statistics. We derive the asymptotic distribution of ...
The asymptotic relative efficiency (ARE) of the rounded sample median M[subscript][epsilon] with res...
We develop some properties on the autocorrelation of the k-period returns for the general mean rever...
We propose a new way of testing the mean-variance efficiency of well-diversified portfolios on large...
Using the power kernels of Phillips, Sun and Jin (2006, 2007), we examine the large sample asymptoti...