Entropy is a classical statistical concept with appealing properties. Establishing asymptotic distribution theory for smoothed nonparametric entropy measures of dependence has so far proved challenging. In this paper, we develop an asymptotic theory for a class of kernel-based smoothed nonparametric entropy measures of serial dependence in a time series context. We use this theory to derive the limiting distribution of Granger and Lins (1994) normalized entropy measure of serial dependence, which was previously not available in the literature. We also apply our theory to construct a new entropy-based test for serial dependence, providing an alternative to Robinsons (1991) approach. To obtain accurate inferences, we propose and justify a con...
We consider the estimation of the entropy of a discretely-supported time series through a plug-in es...
The information-theoretical concept transfer entropy is an ideal measure for detecting conditional i...
In the study of random processes, dependence is the rule rather than the exception. To facilitate th...
We propose tests for nonlinear serial dependence in time series under the null hypothesis of general...
【Abstract】We propose an efcient numerical integration-based nonparametric entropy estimatorfor seria...
In this paper we propose a novel test for the identification of nonlinear dependence in time series....
In the present paper we construct a new, simple, consistent and powerful test for independence by us...
The aim of the paper is to propose a novel test for the identification of nonlinear dependence in ti...
Testing for complex serial dependence in economic and financial time series is a crucial task that b...
In this work we propose a nonparametric test for the identification of nonlinear dependence in time ...
The family of cumulative paired ϕ-entropies offers a wide variety of ordinal dispersion measures, co...
This article develops nonparametric tests of independence between two stochastic processes satisfyin...
The ultimate purpose of the statistical analysis of ordinal patterns is to characterize the distribu...
Information theory provides ideas for conceptualising information and measuring relationships betwee...
In nonparametric tests for serial independence the marginal distribution of the data acts as an infi...
We consider the estimation of the entropy of a discretely-supported time series through a plug-in es...
The information-theoretical concept transfer entropy is an ideal measure for detecting conditional i...
In the study of random processes, dependence is the rule rather than the exception. To facilitate th...
We propose tests for nonlinear serial dependence in time series under the null hypothesis of general...
【Abstract】We propose an efcient numerical integration-based nonparametric entropy estimatorfor seria...
In this paper we propose a novel test for the identification of nonlinear dependence in time series....
In the present paper we construct a new, simple, consistent and powerful test for independence by us...
The aim of the paper is to propose a novel test for the identification of nonlinear dependence in ti...
Testing for complex serial dependence in economic and financial time series is a crucial task that b...
In this work we propose a nonparametric test for the identification of nonlinear dependence in time ...
The family of cumulative paired ϕ-entropies offers a wide variety of ordinal dispersion measures, co...
This article develops nonparametric tests of independence between two stochastic processes satisfyin...
The ultimate purpose of the statistical analysis of ordinal patterns is to characterize the distribu...
Information theory provides ideas for conceptualising information and measuring relationships betwee...
In nonparametric tests for serial independence the marginal distribution of the data acts as an infi...
We consider the estimation of the entropy of a discretely-supported time series through a plug-in es...
The information-theoretical concept transfer entropy is an ideal measure for detecting conditional i...
In the study of random processes, dependence is the rule rather than the exception. To facilitate th...