Applying model selection to statistical sequence modeling: An MDL interpretation of the PPM compression algorithm

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Samenvatting

This work aims to create a bridge between statistical sequence modeling research, represented by the PPM compression algorithm, with model se- lection, represented by the Minimum Description Length Principle (MDL). By creating a direct link between the sequential prediction strategy of PPM with the inductive inference theory for selecting models of MDL, we see that PPM can be seen as a type of a conditional universal distribution relative to a variable-order Markov model. Making this connection allows future research to bridge the gap between PPM and MDL literature.
Originele taal-2English
StatusPublished - 22 jun 2022
EvenementAI Flanders Research Days 2022 - Leuven, Belgium
Duur: 21 jun 202221 jun 2022

Exhibition

ExhibitionAI Flanders Research Days 2022
Land/RegioBelgium
StadLeuven
Periode21/06/2221/06/22

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