Open AccessBook
Probabilistic Graphical Models
Daphne Koller,Nir Friedman +1 more
- 31 Jul 2009
392
Abstract: Probabilistic graphical models provide a flexible framework for modeling large, complex, heterogeneous collections of random variables. Graphs are used to decompose multivariate, joint distributions into a set of local interactions among small subsets of variables. These local relationships produce conditional independencies which lead to efficient learning and inference algorithms. Moreover, their modular structure provides an intuitive language for expressing domain-specific knowledge, and facilitates the transfer of modeling advances to new applications. After a brief introduction to their representational power, this course will provide a comprehensive survey of state-of-the-art methods for statistical learning and inference in graphical models. Our primary focus will be variational methods, which adapt tools from optimization theory to develop efficient, possibly approximate, inference algorithms. We will also discuss a complementary family of Monte Carlo methods, based on stochastic simulation. Many course readings will be drawn from the draft textbook An Introduction to Probabilistic Graphical Models, in preparation by Michael Jordan. Advanced topics will be supported by tutorial and survey articles, and illustrated with state-of-the-art research results and applications. Overall grades will be assigned based on homework assignments combining statistical analysis and implementation of learning algorithms, as well as a final research project involving probabilistic graphical models. Students who took CSCI 2950-P in the Fall of 2011 may repeat for credit, as the topic has changed.
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Citations
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References
Statistical Learning with Sparsity: The Lasso and Generalizations
Trevor Hastie,Robert Tibshirani,Martin J. Wainwright +2 more
- 07 May 2015
TL;DR: Statistical Learning with Sparsity: The Lasso and Generalizations presents methods that exploit sparsity to help recover the underlying signal in a set of data and extract useful and reproducible patterns from big datasets.
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- 14 Dec 2016
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Noise-contrastive estimation of unnormalized statistical models, with applications to natural image statistics
TL;DR: The basic idea is to perform nonlinear logistic regression to discriminate between the observed data and some artificially generated noise and it is shown that the new method strikes a competitive trade-off in comparison to other estimation methods for unnormalized models.
New Frontiers in Spectral-Spatial Hyperspectral Image Classification: The Latest Advances Based on Mathematical Morphology, Markov Random Fields, Segmentation, Sparse Representation, and Deep Learning
Pedram Ghamisi,Emmanuel Maggiori,Shutao Li,Roberto Souza,Yuliya Tarablaka,Gabriele Moser,Andrea De Giorgi,Leyuan Fang,Yushi Chen,Mingmin Chi,Sebastiano B. Serpico,Jon Atli Benediktsson +11 more
TL;DR: In recent years, airborne and spaceborne hyperspectral imaging systems have advanced in terms of spectral and spatial resolution, which makes the data sets they produce a valuable source for land cover classification.
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TL;DR: Thissurvey covers the theory and applications of chordal graphs, with anemphasis on algorithms developed in the literature on sparse Choleskyfactorization, and points out the connections with related topics outside semidefinite optimization, such as probabilistic networks, matrix completion problems, and partial separability in nonlinear optimization.
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