The problem of learning tree-structured Gaussian graphical models from i.i.d. samples is considered. The influence of the tree structure and the parameters of the Gaussian distribution on the learning rate as the number of samples increases is discussed. Specifically, the error exponent corresponding to the event that the estimated tree structure differs from the actual unknown tree structure of the distribution is analyzed. Finding the error exponent reduces to a least-squares problem in the very noisy learning regime. In this regime, it is shown that universally, the extremal tree structures which maximize and minimize the error exponent are the star and the Markov chain for any fixed set of correlation coefficients on the edges of the tr...
This short paper proves inequalities that restrict the magnitudes of the partial correlations in sta...
Graphical models are a widely-used and powerful tool for analyzing high-dimensional structured data....
We study the optimization landscape of the log-likelihood function and the convergence of the Expect...
The problem of learning tree-structured Gaussian graphical models from i.i.d. samples is considered....
The problem of learning tree-structured Gaussian graphical models from independent and identically d...
Abstract—The problem of learning tree-structured Gaussian graphical models from independent and iden...
The problem of maximum-likelihood learning of the structure of an unknown discrete distribution from...
November 21, 2010The problem of maximum-likelihood (ML) estimation of discrete tree-structured distr...
The problem of learning forest-structured discrete graphical models from i.i.d. samples is considere...
The problem of learning forest-structured discrete graphical models from i.i.d. samples is considere...
Abstract—The problem of learning forest-structured discrete graphical models from i.i.d. samples is ...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Undirected probabilistic graphical models or Markov Random Fields (MRFs) are a powerful tool for des...
The problem of structure estimation in graphical models with latent variables is considered. We char...
We study learning curves for Gaussian process regression which characterise per-formance in terms of...
This short paper proves inequalities that restrict the magnitudes of the partial correlations in sta...
Graphical models are a widely-used and powerful tool for analyzing high-dimensional structured data....
We study the optimization landscape of the log-likelihood function and the convergence of the Expect...
The problem of learning tree-structured Gaussian graphical models from i.i.d. samples is considered....
The problem of learning tree-structured Gaussian graphical models from independent and identically d...
Abstract—The problem of learning tree-structured Gaussian graphical models from independent and iden...
The problem of maximum-likelihood learning of the structure of an unknown discrete distribution from...
November 21, 2010The problem of maximum-likelihood (ML) estimation of discrete tree-structured distr...
The problem of learning forest-structured discrete graphical models from i.i.d. samples is considere...
The problem of learning forest-structured discrete graphical models from i.i.d. samples is considere...
Abstract—The problem of learning forest-structured discrete graphical models from i.i.d. samples is ...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Undirected probabilistic graphical models or Markov Random Fields (MRFs) are a powerful tool for des...
The problem of structure estimation in graphical models with latent variables is considered. We char...
We study learning curves for Gaussian process regression which characterise per-formance in terms of...
This short paper proves inequalities that restrict the magnitudes of the partial correlations in sta...
Graphical models are a widely-used and powerful tool for analyzing high-dimensional structured data....
We study the optimization landscape of the log-likelihood function and the convergence of the Expect...