International audienceThis paper mainly aims at unifying as a unique goodness-of-fit procedure the tests based on Shannon entropy–called S-tests–introduced by Vasicek in 1976, and the tests based on relative entropy–or Kullback-Leibler divergence, called KL-tests–introduced by Song in 2002. While Vasicek’s procedure is widely used in the literature, Song’s has remained more confidential. Both tests are known to have good power properties and to lead to straightforward computations. However, some asymptotic properties of the S-tests have never been checked and the link between the two procedures has never been highlighted. Mathematical justification of both tests is detailed here, leading to show their equivalence for testing any parametric ...
Many statistical tests commonly used in practice assume that the distribution of the random observat...
The R package vsgoftest performs goodness-of-fit (GOF) tests, based on Shannon entropy and Kullback-...
The exponential distribution is commonly used to model andexamine lifetime data. When applying the e...
To test whether a set of data has a specific distribution or not, we can use the goodness of fit te...
In the past few years, several entropy-based tests have been proposed for testing either single SNP ...
The likelihood approach based on the empirical distribution functions is a well-accepted statistical...
International audienceWe consider fitting uncategorical data to a parametric family of distributions...
The maximum entropy characterization of the von Mises distribution on the circle is exploited to der...
For Type-II censored sample, we propose three modified entropy estimators based on the Vasieck'...
Efficient genotyping methods and the availability of a large collection of single-nucleotide polymor...
AbstractFor qualitative data models, Gini–Simpson index and Shannon entropy are commonly used for st...
We introduce and examine dbEmpLikeGOF, an R package for performing goodness-of-fit tests based on sa...
This study considers the goodness of fit test for a class of conditionally heteroscedastic location-...
In this paper, we introduce some new goodness-of-fit tests for the Rayleigh distribution based on Je...
The proof of consistency for the kth nearest neighbour distance estimator of the Shannon entropy fo...
Many statistical tests commonly used in practice assume that the distribution of the random observat...
The R package vsgoftest performs goodness-of-fit (GOF) tests, based on Shannon entropy and Kullback-...
The exponential distribution is commonly used to model andexamine lifetime data. When applying the e...
To test whether a set of data has a specific distribution or not, we can use the goodness of fit te...
In the past few years, several entropy-based tests have been proposed for testing either single SNP ...
The likelihood approach based on the empirical distribution functions is a well-accepted statistical...
International audienceWe consider fitting uncategorical data to a parametric family of distributions...
The maximum entropy characterization of the von Mises distribution on the circle is exploited to der...
For Type-II censored sample, we propose three modified entropy estimators based on the Vasieck'...
Efficient genotyping methods and the availability of a large collection of single-nucleotide polymor...
AbstractFor qualitative data models, Gini–Simpson index and Shannon entropy are commonly used for st...
We introduce and examine dbEmpLikeGOF, an R package for performing goodness-of-fit tests based on sa...
This study considers the goodness of fit test for a class of conditionally heteroscedastic location-...
In this paper, we introduce some new goodness-of-fit tests for the Rayleigh distribution based on Je...
The proof of consistency for the kth nearest neighbour distance estimator of the Shannon entropy fo...
Many statistical tests commonly used in practice assume that the distribution of the random observat...
The R package vsgoftest performs goodness-of-fit (GOF) tests, based on Shannon entropy and Kullback-...
The exponential distribution is commonly used to model andexamine lifetime data. When applying the e...