An information-theoretic analysis of the impact of task similarity on meta-learning

Sharu Jose, Osvaldo Simeone

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

Meta-learning aims at optimizing the hyperparameters of a model class or training algorithm from the observation of data from a number of related tasks. Following the setting of Baxter [1], the tasks are assumed to belong to the same task environment, which is defined by a distribution over the space of tasks and by per-task data distributions. The statistical properties of the task environment thus dictate the similarity of the tasks. The goal of the meta-learner is to ensure that the hyperparameters obtain a small loss when applied for training of a new task sampled from the task environment. The difference between the resulting average loss, known as meta-population loss, and the corresponding empirical loss measured on the available data from related tasks, known as meta-generalization gap, is a measure of the generalization capability of the meta-learner. In this paper, we present novel information-theoretic bounds on the average absolute value of the meta-generalization gap. Unlike prior work [2], our bounds explicitly capture the impact of task relatedness, the number of tasks, and the number of data samples per task on the meta-generalization gap. Task similarity is gauged via the Kullback-Leibler (KL) and Jensen-Shannon (JS) divergences. We illustrate the proposed bounds on the example of ridge regression with meta-learned bias.
Original languageEnglish
Title of host publication2021 IEEE International Symposium on Information Theory (ISIT)
PublisherIEEE
Pages1534-1539
Number of pages6
ISBN (Electronic)9781538682098
ISBN (Print)9781538682104 (PoD)
DOIs
Publication statusPublished - 1 Sept 2021
Event2021 IEEE International Symposium on Information Theory - Melbourne, Australia
Duration: 12 Jul 202120 Jul 2021

Publication series

NameIEEE International Symposium on Information Theory proceedings
PublisherIEEE
ISSN (Print)2157-8095
ISSN (Electronic)2157-8117

Conference

Conference2021 IEEE International Symposium on Information Theory
Abbreviated titleISIT 2021
Country/TerritoryAustralia
CityMelbourne
Period12/07/2120/07/21

Keywords

  • Training
  • Loss measurement
  • Data models
  • Task analysis
  • Information theory

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