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  4. Learning, compression, and leakage: Minimising classification error via meta-universal compression principles
 
conference paper

Learning, compression, and leakage: Minimising classification error via meta-universal compression principles

Rosas, Fernando E.
•
Mediano, Pedro A. M.
•
Gastpar, Michael  
January 1, 2021
2020 Ieee Information Theory Workshop (Itw)
IEEE Information Theory Workshop (ITW)

Learning and compression are driven by the common aim of identifying and exploiting statistical regularities in data, which opens the door for fertile collaboration between these areas. A promising group of compression techniques for learning scenarios is normalised maximum likelihood (NML) coding, which provides strong guarantees for compression of small datasets - in contrast with more popular estimators whose guarantees hold only in the asymptotic limit. Here we consider a NML-based decision strategy for supervised classification problems, and show that it attains heuristic PAC learning when applied to a wide variety of models. Furthermore, we show that the misclassification rate of our method is upper bounded by the maximal leakage, a recently proposed metric to quantify the potential of data leakage in privacy-sensitive scenarios.

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Type
conference paper
DOI
10.1109/ITW46852.2021.9457579
Web of Science ID

WOS:000713953900010

Author(s)
Rosas, Fernando E.
Mediano, Pedro A. M.
Gastpar, Michael  
Date Issued

2021-01-01

Publisher

IEEE

Publisher place

New York

Published in
2020 Ieee Information Theory Workshop (Itw)
ISBN of the book

978-1-7281-5962-1

Subjects

supervised learning

•

universal compression

•

maximal leakage

•

normalised maximum likelihood

•

information

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LINX  
Event nameEvent placeEvent date
IEEE Information Theory Workshop (ITW)

ELECTR NETWORK

Apr 11-15, 2021

Available on Infoscience
December 4, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/183581
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