We study graph estimation and density estimation in high dimensions, using a family of density estimators based on forest structured undirected graphical models. For density estimation, we do not assume the true distribution corresponds to a forest; rather, we form kernel density estimates of the bivariate and univariate marginals, and apply Kruskal’s algorithm to estimate the optimal forest on held out data. We prove an oracle inequality on the excess risk of the resulting estimator relative to the risk of the best forest. For graph estimation, we consider the problem of estimating forests with restricted tree sizes. We prove that finding a maximum weight spanning forest with restricted tree size is NP-hard, and develop an approximation al...
This dissertation proposes a new semiparametric approach for binary classification that exploits the...
manuscrit HAL : hal-00401550, version 1 - 3 jul 2009Applications on inference of biological networks...
We present algorithms for finding the level set tree of a multivariate density estimate. That is, we...
We present a novel framework for tree-structure embedded density estimation and its fast approximati...
We present a novel framework for tree-structure embed-ded density estimation and its fast approximat...
We study the problem of estimating the density $f(\boldsymbol x)$ of a random vector ${\boldsymbol X...
Abstract—This work introduces a novel nonparametric density index defined on graphs, the Sum-over-Fo...
Graphical models provide a convenient representation for a broad class of probability distributions....
Large graphs abound in machine learning, data mining, and several related areas. A useful step towar...
We study the problem of maximum likelihood estimation of densities that are log-concave and lie in t...
Density estimation is a fundamental problem in statistics, and any attempt to do so in high dimensio...
<div><p>Many statistical methods gain robustness and flexibility by sacrificing convenient computati...
The problem of learning forest-structured discrete graphical models from i.i.d. samples is considere...
Abstract. A known approach of detecting dense subgraphs (communities) in large sparse graphs involve...
Frequentist methods for learning Gaussian graphical model structure are unsuccessful at identifying ...
This dissertation proposes a new semiparametric approach for binary classification that exploits the...
manuscrit HAL : hal-00401550, version 1 - 3 jul 2009Applications on inference of biological networks...
We present algorithms for finding the level set tree of a multivariate density estimate. That is, we...
We present a novel framework for tree-structure embedded density estimation and its fast approximati...
We present a novel framework for tree-structure embed-ded density estimation and its fast approximat...
We study the problem of estimating the density $f(\boldsymbol x)$ of a random vector ${\boldsymbol X...
Abstract—This work introduces a novel nonparametric density index defined on graphs, the Sum-over-Fo...
Graphical models provide a convenient representation for a broad class of probability distributions....
Large graphs abound in machine learning, data mining, and several related areas. A useful step towar...
We study the problem of maximum likelihood estimation of densities that are log-concave and lie in t...
Density estimation is a fundamental problem in statistics, and any attempt to do so in high dimensio...
<div><p>Many statistical methods gain robustness and flexibility by sacrificing convenient computati...
The problem of learning forest-structured discrete graphical models from i.i.d. samples is considere...
Abstract. A known approach of detecting dense subgraphs (communities) in large sparse graphs involve...
Frequentist methods for learning Gaussian graphical model structure are unsuccessful at identifying ...
This dissertation proposes a new semiparametric approach for binary classification that exploits the...
manuscrit HAL : hal-00401550, version 1 - 3 jul 2009Applications on inference of biological networks...
We present algorithms for finding the level set tree of a multivariate density estimate. That is, we...