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Learning Probabilistic Graphical Models in R
book

Learning Probabilistic Graphical Models in R

by David Bellot
April 2016
Beginner to intermediate content levelBeginner to intermediate
250 pages
5h 38m
English
Packt Publishing
Content preview from Learning Probabilistic Graphical Models in R

Summary

In this last chapter, we saw more advanced probabilistic graphical models, whose solution is not easy to compute with standard tools such as the junction tree algorithm. This chapter set out to show that the graphical model framework can still be used even if one has to develop a special algorithm for each model. Indeed, in the LDA model, the solution to the variational problem appeared by looking at the graph of the original LDA and by transforming this graph, thus leading to a better approximation of the initial problem. So, even if the final algorithm does not use the graph directly like a junction tree algorithm would do, the solution came from the graph anyway.

This chapter proved how powerful probabilistic graphical models can be, ...

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Publisher Resources

ISBN: 9781784392055Supplemental Content