the bioinformatics chat

#28 Space-efficient variable-order Markov models with Fabio Cunial

12.28.2018 - By Roman CheplyakaPlay

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This time you’ll hear from Fabio Cunial on the topic of Markov models and

space-efficient data structures. First we recall what a Markov model is and

why variable-order Markov models are an improvement over the standard,

fixed-order models. Next we discuss the various data structures and indexes

that allowed Fabio and his collaborators to represent these models in a very

small space while still keeping the queries efficient. Burrows-Wheeler

transform, suffix trees and arrays, tries and suffix link trees, and more!

Links:

The preprint: A framework for space-efficient variable-order Markov models

The book: Genome-Scale Algorithm Design

The GitHub repo

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