We consider the problem of high-dimensional Gaussian graphical model selection. We identify a set of graphs for which an efficient estimation algorithm exists, and this algorithm is based on thresholding of empirical conditional covariances. Under a set of transparent conditions, we establish structural consistency (or sparsistency) for the proposed algorithm, when the number of samples n=Ω(J_(min)^(-2) log p), where p is the number of variables and J_(min) is the minimum (absolute) edge potential of the graphical model. The sufficient conditions for sparsistency are based on the notion of walk-summability of the model and the presence of sparse local vertex separators in the underlying graph. We also derive novel non-asymptotic necessary c...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...
In this article we present an approach to rank edges in a network modeled through a Gaussian Graphic...
Undirected probabilistic graphical models represent the conditional dependencies, or Markov properti...
We consider the problem of high-dimensional Gaussian graphical model selection. We identify a set of...
We consider the problem of high-dimensional Gaussian graphical model selection. We identify a set o...
We consider the problem of high-dimensional Gaussian graphical model selection. We identify a set o...
We consider the problem of Ising and Gaussian graphical model selection given n i.i.d. samples from ...
We consider the problem of Ising and Gaussian graphical model selection given n i.i.d. samples from ...
We consider the problem of Ising and Gaussian graphical model selection given n i.i.d. samples from ...
We consider the problem of high-dimensional Ising (graphical) model selection. We propose a simple a...
We consider the problem of high-dimensional Ising (graphical) model selection. We propose a simple a...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
Locality information is crucial in datasets where each variable corresponds to a measurement in a ma...
We consider the problem of high-dimensional Ising (graphical) model selection. We propose a simple a...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...
In this article we present an approach to rank edges in a network modeled through a Gaussian Graphic...
Undirected probabilistic graphical models represent the conditional dependencies, or Markov properti...
We consider the problem of high-dimensional Gaussian graphical model selection. We identify a set of...
We consider the problem of high-dimensional Gaussian graphical model selection. We identify a set o...
We consider the problem of high-dimensional Gaussian graphical model selection. We identify a set o...
We consider the problem of Ising and Gaussian graphical model selection given n i.i.d. samples from ...
We consider the problem of Ising and Gaussian graphical model selection given n i.i.d. samples from ...
We consider the problem of Ising and Gaussian graphical model selection given n i.i.d. samples from ...
We consider the problem of high-dimensional Ising (graphical) model selection. We propose a simple a...
We consider the problem of high-dimensional Ising (graphical) model selection. We propose a simple a...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
Locality information is crucial in datasets where each variable corresponds to a measurement in a ma...
We consider the problem of high-dimensional Ising (graphical) model selection. We propose a simple a...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...
In this article we present an approach to rank edges in a network modeled through a Gaussian Graphic...
Undirected probabilistic graphical models represent the conditional dependencies, or Markov properti...