A class of estimators of the Rényi and Tsallis entropies of an unknown distribution f in Rm is presented. These estimators are based on the kth nearest-neighbor distances computed from a sample of N i.i.d. vectors with distribution f. We show that entropies of any order q, including Shannon’s entropy, can be estimated consistently with minimal assumptions on f. Moreover, we show that it is straightforward to extend the nearest-neighbor method to estimate the statistical distance between two distributions using one i.i.d. sample from each
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
AbstractEntropy and its various generalizations are widely used in mathematical statistics, communic...
Entropy is one of the most basic and significant descriptors of a probability distribution. It is st...
A class of estimators of the Rényi and Tsallis entropies of an unknown distribution f in Rm is prese...
A class of estimators of the Rényi and Tsallis entropies of an unknown distribution f in Rm is prese...
A class of estimators of the Rényi and Tsallis entropies of an unknown distribution f in Rm is prese...
http://www.imstat.org/aos/ Correction in AS, 38(6):3837-3838, 2010, DOI: 10.1214/10-AOS773, see http...
International audienceWe extend the results by Leonenko et al. and show how k-th nearest-neighbor di...
Many statistical procedures, including goodness-of-fit tests and methods for independent component a...
Nearest neighbour methods are a classical approach in nonparametric statistics. The k-nearest neighb...
A large part of non-parametric statistical techniques are in one way or another related to the geome...
In molecular sciences, the estimation of entropies of molecules is important for the understanding o...
We present a new class of estimators for approximating the entropy of multi-dimensional probability ...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
AbstractEntropy and its various generalizations are widely used in mathematical statistics, communic...
Entropy is one of the most basic and significant descriptors of a probability distribution. It is st...
A class of estimators of the Rényi and Tsallis entropies of an unknown distribution f in Rm is prese...
A class of estimators of the Rényi and Tsallis entropies of an unknown distribution f in Rm is prese...
A class of estimators of the Rényi and Tsallis entropies of an unknown distribution f in Rm is prese...
http://www.imstat.org/aos/ Correction in AS, 38(6):3837-3838, 2010, DOI: 10.1214/10-AOS773, see http...
International audienceWe extend the results by Leonenko et al. and show how k-th nearest-neighbor di...
Many statistical procedures, including goodness-of-fit tests and methods for independent component a...
Nearest neighbour methods are a classical approach in nonparametric statistics. The k-nearest neighb...
A large part of non-parametric statistical techniques are in one way or another related to the geome...
In molecular sciences, the estimation of entropies of molecules is important for the understanding o...
We present a new class of estimators for approximating the entropy of multi-dimensional probability ...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
AbstractEntropy and its various generalizations are widely used in mathematical statistics, communic...
Entropy is one of the most basic and significant descriptors of a probability distribution. It is st...