AbstractIn this paper we investigate the dimensional structure of probability distributions on Euclidean space and characterize a class of regular distributions. We obtain a consistent estimator of dimension based on a nearest neighbor statistic and in addition obtain asymptotic confidence intervals for dimension in the case of regular distributions. Although many examples of point estimation of dimension have recently appeared in the literature on chaotic attractors in dynamical systems, questions of consistency and interval estimation have not previously been addressed systematically
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
In this paper we investigate the dimensional structure of probability distributions on Euclidean spa...
AbstractIn this paper we investigate the dimensional structure of probability distributions on Eucli...
AbstractA new least-squares approach to information dimension estimation of the invariant distributi...
AbstractA new least-squares approach to information dimension estimation of the invariant distributi...
We present a new method to estimate the intrinsic dimensionality of a submanifold M in R d from rand...
We present a new method to estimate the intrinsic dimensionality of a submanifold M in Euclidean spa...
We present a new method to estimate the intrinsic dimensionality of a submanifold M in Euclidean spa...
AbstractIn canonical correlation analysis the number of nonzero population correlation coefficients ...
International audienceWe consider a dynamical ergodic system defined as:<br />Xt=ù(Xt-1,..., Xt-m0)<...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
In this paper we investigate the dimensional structure of probability distributions on Euclidean spa...
AbstractIn this paper we investigate the dimensional structure of probability distributions on Eucli...
AbstractA new least-squares approach to information dimension estimation of the invariant distributi...
AbstractA new least-squares approach to information dimension estimation of the invariant distributi...
We present a new method to estimate the intrinsic dimensionality of a submanifold M in R d from rand...
We present a new method to estimate the intrinsic dimensionality of a submanifold M in Euclidean spa...
We present a new method to estimate the intrinsic dimensionality of a submanifold M in Euclidean spa...
AbstractIn canonical correlation analysis the number of nonzero population correlation coefficients ...
International audienceWe consider a dynamical ergodic system defined as:<br />Xt=ù(Xt-1,..., Xt-m0)<...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...
International audienceWe consider a dynamical ergodic system defined as:Xt=ù(Xt-1,..., Xt-m0)where m...