International audienceThe study of finite approximations of probability measures has a long history. In (Xu and Berger, 2017), the authors focus on constrained finite approximations and, in particular, uniform ones in dimension d = 1. The present paper gives an elementary construction of a uniform decomposition of probability measures in dimension d ≥ 1. This decomposition is then used to give upper-bounds on the rate of convergence of the optimal uniform approximation error. These bounds appear to be the generalization of the ones obtained in (Xu and Berger, 2017) and to be sharp for generic probability measures
We introduce the quantization number and the essential covering rate. We treat the quantization for ...
We introduce the quantization number and the essential covering rate. We treat the quantization for ...
A new method of approximating the probability density function (pdf’s) of econometric estimators and...
International audienceThe study of finite approximations of probability measures has a long history....
In this work, we provide non-asymptotic bounds for the average speed of convergence of the empirical...
In this work, we provide non-asymptotic bounds for the average speed of convergence of the empirical...
This paper deals with suitable quantifications in approximating a probability measure by an “empiric...
International audienceIn this work, we provide non-asymptotic bounds for the average speed of conver...
International audienceIn this work, we provide non-asymptotic bounds for the average speed of conver...
International audienceIn this work, we provide non-asymptotic bounds for the average speed of conver...
This paper deals with suitable quantifications in approximating a probability measure by an “empiric...
We demonstrate that questions of convergence and divergence regarding shapes of distributions can be...
The problem of quantization can be thought of as follows: given a probability distribution P and a n...
We demonstrate that questions of convergence and divergence regarding shapes of distributions can be...
We demonstrate that questions of convergence and divergence regarding shapes of distributions can be...
We introduce the quantization number and the essential covering rate. We treat the quantization for ...
We introduce the quantization number and the essential covering rate. We treat the quantization for ...
A new method of approximating the probability density function (pdf’s) of econometric estimators and...
International audienceThe study of finite approximations of probability measures has a long history....
In this work, we provide non-asymptotic bounds for the average speed of convergence of the empirical...
In this work, we provide non-asymptotic bounds for the average speed of convergence of the empirical...
This paper deals with suitable quantifications in approximating a probability measure by an “empiric...
International audienceIn this work, we provide non-asymptotic bounds for the average speed of conver...
International audienceIn this work, we provide non-asymptotic bounds for the average speed of conver...
International audienceIn this work, we provide non-asymptotic bounds for the average speed of conver...
This paper deals with suitable quantifications in approximating a probability measure by an “empiric...
We demonstrate that questions of convergence and divergence regarding shapes of distributions can be...
The problem of quantization can be thought of as follows: given a probability distribution P and a n...
We demonstrate that questions of convergence and divergence regarding shapes of distributions can be...
We demonstrate that questions of convergence and divergence regarding shapes of distributions can be...
We introduce the quantization number and the essential covering rate. We treat the quantization for ...
We introduce the quantization number and the essential covering rate. We treat the quantization for ...
A new method of approximating the probability density function (pdf’s) of econometric estimators and...