This paper considers tests for symmetry of the one-dimensional marginal distribution of fractionally integrated processes. The tests are implemented by using an autoregressive sieve bootstrap approximation to the null sampling distribution of the relevant test statistics. The sieve bootstrap allows inference on symmetry to be carried out without knowledge of either the memory parameter of the data or of the appropriate norming factor for the test statistic and its asymptotic distribution. The small-sample properties of the proposed method are examined by means of Monte Carlo experiments, and applications to real-world data are also presented
Being able to formally test for symmetry hypotheses is an important topic in many fields, including ...
A distance test for normality of the one-dimensional marginal distribution of stationary fractionall...
This paper considers a distance test for normality of the one-dimensional marginal distribution of s...
The paper considers the problem of testing for symmetry (about an unknown centre) of the marginal di...
The paper considers the problem of testing for symmetry (about an unknown centre) of the marginal di...
The paper considers the problem of testing for symmetry (about an unknown centre) of the marginal di...
This article considers a nonparametric test for symmetry of the marginal law of a stationary stochas...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
It is important to examine the symmetry of an underlying distribution before applying some statistic...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
Being able to formally test for symmetry hypotheses is an important topic in many fields, including ...
Being able to formally test for symmetry hypotheses is an important topic in many fields, including ...
A distance test for normality of the one-dimensional marginal distribution of stationary fractionall...
This paper considers a distance test for normality of the one-dimensional marginal distribution of s...
The paper considers the problem of testing for symmetry (about an unknown centre) of the marginal di...
The paper considers the problem of testing for symmetry (about an unknown centre) of the marginal di...
The paper considers the problem of testing for symmetry (about an unknown centre) of the marginal di...
This article considers a nonparametric test for symmetry of the marginal law of a stationary stochas...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
It is important to examine the symmetry of an underlying distribution before applying some statistic...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
Being able to formally test for symmetry hypotheses is an important topic in many fields, including ...
Being able to formally test for symmetry hypotheses is an important topic in many fields, including ...
A distance test for normality of the one-dimensional marginal distribution of stationary fractionall...
This paper considers a distance test for normality of the one-dimensional marginal distribution of s...