In nonparametric tests for serial independence the marginal distribution of the data acts as an infinite dimensional nuisance parameter. The decomposition of joint distributions in terms of a copula density and marginal densities shows that in general empirical marginals carry no information on dependence. It follows that the order of ranks is sufficient for inference, which motivates transforming the data to a pre-specified marginal distribution prior to testing. As a test statistic we use an estimator of the marginal redundancy, which has some desirable properties in the case of transforming to uniform marginals. We numerically study the finite sample properties of these tests when the data are transformed to uniform as well as normal mar...
Intraclass rank statistics are introduced to test for independence in a bivariate population when it...
Implementations of the weighted Kozachenko-Leonenko entropy estimator and independence tests based o...
To decide whether a given sequence is “truely ” random, or independent and identically distributed, ...
In nonparametric tests for serial independence the marginal distribution of the data acts as an infi...
This article develops nonparametric tests of independence between two stochastic processes satisfyin...
Abstract. A family of linear rank statistics is proposed in order to test the independence of a time...
【Abstract】We propose an efcient numerical integration-based nonparametric entropy estimatorfor seria...
We propose tests for nonlinear serial dependence in time series under the null hypothesis of general...
Entropy is a classical statistical concept with appealing properties. Establishing asymptotic distri...
In the present paper we construct a new, simple, consistent and powerful test for independence by us...
This article reviews some nonparametric serial independence tests based on measures of divergence be...
Optimal rank-based procedures were derived in Hallin, Ingenbleek, and Puri (1985, 1987) and Hallin a...
This paper presents a new test of independence (linear and non-linear) among distributions based on ...
Thesis (Ph.D.)--University of Washington, 2021Testing independence is a fundamental statistical prob...
We propose a test of independence of two multivariate random vectors, given a sample from the underl...
Intraclass rank statistics are introduced to test for independence in a bivariate population when it...
Implementations of the weighted Kozachenko-Leonenko entropy estimator and independence tests based o...
To decide whether a given sequence is “truely ” random, or independent and identically distributed, ...
In nonparametric tests for serial independence the marginal distribution of the data acts as an infi...
This article develops nonparametric tests of independence between two stochastic processes satisfyin...
Abstract. A family of linear rank statistics is proposed in order to test the independence of a time...
【Abstract】We propose an efcient numerical integration-based nonparametric entropy estimatorfor seria...
We propose tests for nonlinear serial dependence in time series under the null hypothesis of general...
Entropy is a classical statistical concept with appealing properties. Establishing asymptotic distri...
In the present paper we construct a new, simple, consistent and powerful test for independence by us...
This article reviews some nonparametric serial independence tests based on measures of divergence be...
Optimal rank-based procedures were derived in Hallin, Ingenbleek, and Puri (1985, 1987) and Hallin a...
This paper presents a new test of independence (linear and non-linear) among distributions based on ...
Thesis (Ph.D.)--University of Washington, 2021Testing independence is a fundamental statistical prob...
We propose a test of independence of two multivariate random vectors, given a sample from the underl...
Intraclass rank statistics are introduced to test for independence in a bivariate population when it...
Implementations of the weighted Kozachenko-Leonenko entropy estimator and independence tests based o...
To decide whether a given sequence is “truely ” random, or independent and identically distributed, ...