We study piece-wise constant signals corrupted by additive Gaussian noise over a d-dimensional lattice. Data of this form naturally arise in a host of applications, and the tasks of signal detection or testing, de-noising and estimation have been studied extensively in the statistical and signal processing literature. In this paper we consider instead the problem of partition recovery, i.e. of estimating the partition of the lattice induced by the constancy regions of the unknown signal, using the computationally-efficient dyadic classification and regression tree (DCART) methodology proposed by [14]. We prove that, under appropriate regularity conditions on the shape of the partition elements, a DCART-based procedure consistently estimates...
The planted partition model (also known as the stochastic blockmodel) is a classical cluster-exhibit...
International audienceWe propose a fast algorithm for constructing an optimal partition, in terms of...
Abstract—Given a background graph with n vertices, the bi-nary censored block model assumes that ver...
International audienceThis paper proposes a novel method to adapt the block-sparsity structure to th...
A current topic of great interest is the multi-resolution analysis of signals and the devel-opment o...
Abstract — Lower dimensional signal representation schemes frequently assume that the signal of inte...
Cet article traite de l'estimation adaptative de la structuration de la parcimonie en blocs dyadique...
We consider a graph-structured change point problem in which we observe a random vector with piece-w...
<p>Covariance structure plays an important role in high-dimensional statistical inference. In a rang...
© 2018 Curran Associates Inc.All rights reserved. We consider a high dimensional linear regression p...
Abstract. A partitioning of a set of n items is a grouping of these items into k disjoint, equally s...
Abstract—The binary symmetric stochastic block model deals with a random graph of n vertices partiti...
When a phenomenon is described by a parametric model and multiple datasets are available, a key prob...
Final versionInternational audienceWe study a weaker formulation of the nullspace property which gua...
This paper reports on a family of computationally practical classifiers that converge to the Bayes e...
The planted partition model (also known as the stochastic blockmodel) is a classical cluster-exhibit...
International audienceWe propose a fast algorithm for constructing an optimal partition, in terms of...
Abstract—Given a background graph with n vertices, the bi-nary censored block model assumes that ver...
International audienceThis paper proposes a novel method to adapt the block-sparsity structure to th...
A current topic of great interest is the multi-resolution analysis of signals and the devel-opment o...
Abstract — Lower dimensional signal representation schemes frequently assume that the signal of inte...
Cet article traite de l'estimation adaptative de la structuration de la parcimonie en blocs dyadique...
We consider a graph-structured change point problem in which we observe a random vector with piece-w...
<p>Covariance structure plays an important role in high-dimensional statistical inference. In a rang...
© 2018 Curran Associates Inc.All rights reserved. We consider a high dimensional linear regression p...
Abstract. A partitioning of a set of n items is a grouping of these items into k disjoint, equally s...
Abstract—The binary symmetric stochastic block model deals with a random graph of n vertices partiti...
When a phenomenon is described by a parametric model and multiple datasets are available, a key prob...
Final versionInternational audienceWe study a weaker formulation of the nullspace property which gua...
This paper reports on a family of computationally practical classifiers that converge to the Bayes e...
The planted partition model (also known as the stochastic blockmodel) is a classical cluster-exhibit...
International audienceWe propose a fast algorithm for constructing an optimal partition, in terms of...
Abstract—Given a background graph with n vertices, the bi-nary censored block model assumes that ver...