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You're reading from  R Statistics Cookbook

Product typeBook
Published inMar 2019
Reading LevelExpert
PublisherPackt
ISBN-139781789802566
Edition1st Edition
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Francisco Juretig
Francisco Juretig
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Francisco Juretig

Francisco Juretig has worked for over a decade in a variety of industries such as retail, gambling and finance deploying data-science solutions. He has written several R packages, and is a frequent contributor to the open source community.
Read more about Francisco Juretig

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Bayesian variable selection

Bayesian variable selection within a classical context is usually simple. It really boils down to selecting an appropriate metric (such as the AIC or p-values) and evaluating the model in a greedy way; starting with either a simple (or complex) model, and seeing what happens when we add (or remove) terms.

In a Bayesian context, things are not that easy, since we are not treating parameters as fixed values. We are estimating a posterior density, but a density itself has no significance so we can no longer remove them based on p-values. The AIC way can't be used either, as we don't have an AIC value, but a distribution of possible AICs.

Clearly, we need a different way of doing variable selection that takes into consideration that we are dealing with densities. Kuo and Mallick (https://www.jstor.org/stable/25053023?seq=1#page_scan_tab_contents...

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R Statistics Cookbook
Published in: Mar 2019Publisher: PacktISBN-13: 9781789802566

Author (1)

author image
Francisco Juretig

Francisco Juretig has worked for over a decade in a variety of industries such as retail, gambling and finance deploying data-science solutions. He has written several R packages, and is a frequent contributor to the open source community.
Read more about Francisco Juretig