Latent tree graphical models are widely used in computational biology, signal and image processing, and network tomography. Here, we design a new efficient, estimation procedure for latent tree models, including Gaussian and discrete, reversible models, that significantly improves on previous sample requirement bounds. Our techniques are based on a new hidden state estimator that is robust to inaccuracies in estimated parameters. More precisely, we prove that latent tree models can be estimated with high probability in the so-called Kesten-Stigum regime with O(log2n) samples, where n is the number of nodes
We study the problem of learning a latent tree graphical model where samples are available only from...
We present an integrated approach to structure and parameter estimation in latent tree graphical mod...
We develop a new class of hierarchical stochastic models called spatial random trees (SRTs) which ad...
Latent tree graphical models are widely used in computational biology, signal and image processing, ...
We study the problem of learning a latent tree graphical model where samples are available only from...
The problem of structure estimation in graphical models with latent variables is considered. We char...
We study the optimization landscape of the log-likelihood function and the convergence of the Expect...
Graphical model selection refers to the problem of estimating the unknown graph structure given obse...
Undirected probabilistic graphical models or Markov Random Fields (MRFs) are a powerful tool for des...
Latent tree graphical models are natural tools for expressing long range and hierarchical dependenci...
In this document, I present various contributions to hidden Markov models on graphs and more general...
Hidden Markov random fields represent a complex hierarchical model, where the hidden latent process ...
We provide time- and sample-efficient algorithms for learning and testing latent-tree Ising models, ...
International audienceGraphical network inference is used in many fields such as genomics or ecology...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
We study the problem of learning a latent tree graphical model where samples are available only from...
We present an integrated approach to structure and parameter estimation in latent tree graphical mod...
We develop a new class of hierarchical stochastic models called spatial random trees (SRTs) which ad...
Latent tree graphical models are widely used in computational biology, signal and image processing, ...
We study the problem of learning a latent tree graphical model where samples are available only from...
The problem of structure estimation in graphical models with latent variables is considered. We char...
We study the optimization landscape of the log-likelihood function and the convergence of the Expect...
Graphical model selection refers to the problem of estimating the unknown graph structure given obse...
Undirected probabilistic graphical models or Markov Random Fields (MRFs) are a powerful tool for des...
Latent tree graphical models are natural tools for expressing long range and hierarchical dependenci...
In this document, I present various contributions to hidden Markov models on graphs and more general...
Hidden Markov random fields represent a complex hierarchical model, where the hidden latent process ...
We provide time- and sample-efficient algorithms for learning and testing latent-tree Ising models, ...
International audienceGraphical network inference is used in many fields such as genomics or ecology...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
We study the problem of learning a latent tree graphical model where samples are available only from...
We present an integrated approach to structure and parameter estimation in latent tree graphical mod...
We develop a new class of hierarchical stochastic models called spatial random trees (SRTs) which ad...