Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Computer Science, 2014.Cataloged from PDF version of thesis.Includes bibliographical references (pages 147-152).We study the decay of correlations property in graphical models and its implications on efficient algorithms for inference in these models. We consider three specific problems: 1) The List Coloring problem on graphs, [upper case letter g in italic] The MAX-CUT problem on graphs with random edge deletions, and 3) Low Rank Matrix Completion from an incomplete subset of its entries. For each problem, we analyze the conditions under which either spatial or temporal decay of correlations exists and provide approximate inference algorithms in...
Random-graphs and statistical inference with missing data are two separate topics that have been wid...
Datasets come in a variety of forms and from a broad range of different applications. Typically, the...
Let G(n,m) be a random graph whose average degree d=2m/n is below the k-colorability threshold. If w...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
We propose and investigate a unifying class of sparse random graph models, based on a hidden colorin...
AbstractWe construct a deterministic algorithm for approximately counting the number of colorings of...
Approximate counting via correlation decay is the core algorithmic technique used in the sharp delin...
In this paper we study the component structure of random graphs with independence between the edges....
Let G=G(n,m) be a random graph whose average degree d=2m/n is below the k-colorability threshold. If...
Unsupervised learning of graphical models is an important task in many domains. Although maximum lik...
Graphical models are used to describe the interactions in structures, such as the nodes in decoding ...
We demonstrate how to generalize two of the most well-known random graph models, the classic random ...
Graphical models provide a convenient representation for a broad class of probability distributions....
We address exact MAP inference for undirected graphical models, i.e. finding a global mode configura...
This is the author accepted manuscript. The final version is available from MIT Press via http://jml...
Random-graphs and statistical inference with missing data are two separate topics that have been wid...
Datasets come in a variety of forms and from a broad range of different applications. Typically, the...
Let G(n,m) be a random graph whose average degree d=2m/n is below the k-colorability threshold. If w...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
We propose and investigate a unifying class of sparse random graph models, based on a hidden colorin...
AbstractWe construct a deterministic algorithm for approximately counting the number of colorings of...
Approximate counting via correlation decay is the core algorithmic technique used in the sharp delin...
In this paper we study the component structure of random graphs with independence between the edges....
Let G=G(n,m) be a random graph whose average degree d=2m/n is below the k-colorability threshold. If...
Unsupervised learning of graphical models is an important task in many domains. Although maximum lik...
Graphical models are used to describe the interactions in structures, such as the nodes in decoding ...
We demonstrate how to generalize two of the most well-known random graph models, the classic random ...
Graphical models provide a convenient representation for a broad class of probability distributions....
We address exact MAP inference for undirected graphical models, i.e. finding a global mode configura...
This is the author accepted manuscript. The final version is available from MIT Press via http://jml...
Random-graphs and statistical inference with missing data are two separate topics that have been wid...
Datasets come in a variety of forms and from a broad range of different applications. Typically, the...
Let G(n,m) be a random graph whose average degree d=2m/n is below the k-colorability threshold. If w...