Learning Gaussian Tree Models: Analysis of Error Exponents and Extremal Structures
Abstract
The problem of learning tree-structured Gaussian graphical models from independent and identically distributed (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 the extremal tree structure that minimizes the error exponent is the star for any fixed set of correlation coefficients on the edges of the tree. If the magnitudes of all the correlation coefficients are less than 0.63, it is also shown that the tree structure that maximizes the error exponent is the Markov chain. In other words, the star and the chain graphs represent the hardest and the easiest structures to learn in the class of tree-structured Gaussian graphical models. This result can also be intuitively explained by correlation decay: pairs of nodes which are far apart, in terms of graph distance, are unlikely to be mistaken as edges by the maximum-likelihood estimator in the asymptotic regime.
Additional Information
© 2010 IEEE. Manuscript received September 28, 2009; accepted January 21, 2010. Date of publication February 05, 2010; date of current version April 14, 2010. The associate editor coordinating the review of this manuscript and approving it for publication was Dr. Deniz Erdogmus. This work was presented in part at the Allerton Conference on Communication, Control, and Computing, Monticello, IL, September 2009. This work was supported in part by a AFOSR through Grant FA9550-08-1-1080, in part by a MURI funded through ARO Grant W911NF-06-1-0076, and in part under a MURI through AFOSR Grant FA9550-06-1-0324. The work of V. Tan was supported by A*STAR, Singapore.Attached Files
Published - 05406101.pdf
Submitted - 0909.5216.pdf
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Additional details
- Eprint ID
- 81730
- Resolver ID
- CaltechAUTHORS:20170922-082655078
- Air Force Office of Scientific Research (AFOSR)
- FA9550-08-1-1080
- Army Research Office (ARO)
- W911NF-06-1-0076
- Air Force Office of Scientific Research (AFOSR)
- FA9550-06-1-0324
- Agency for Science, Technology and Research (A*STAR)
- Created
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2017-09-22Created from EPrint's datestamp field
- Updated
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2021-11-15Created from EPrint's last_modified field