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Bibliographic Details
Main Authors: Zakerinia, Hossein, Behjati, Amin, Lampert, Christoph H.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.04054
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author Zakerinia, Hossein
Behjati, Amin
Lampert, Christoph H.
author_facet Zakerinia, Hossein
Behjati, Amin
Lampert, Christoph H.
contents We introduce a new framework for studying meta-learning methods using PAC-Bayesian theory. Its main advantage over previous work is that it allows for more flexibility in how the transfer of knowledge between tasks is realized. For previous approaches, this could only happen indirectly, by means of learning prior distributions over models. In contrast, the new generalization bounds that we prove express the process of meta-learning much more directly as learning the learning algorithm that should be used for future tasks. The flexibility of our framework makes it suitable to analyze a wide range of meta-learning mechanisms and even design new mechanisms. Other than our theoretical contributions we also show empirically that our framework improves the prediction quality in practical meta-learning mechanisms.
format Preprint
id arxiv_https___arxiv_org_abs_2402_04054
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle More Flexible PAC-Bayesian Meta-Learning by Learning Learning Algorithms
Zakerinia, Hossein
Behjati, Amin
Lampert, Christoph H.
Machine Learning
We introduce a new framework for studying meta-learning methods using PAC-Bayesian theory. Its main advantage over previous work is that it allows for more flexibility in how the transfer of knowledge between tasks is realized. For previous approaches, this could only happen indirectly, by means of learning prior distributions over models. In contrast, the new generalization bounds that we prove express the process of meta-learning much more directly as learning the learning algorithm that should be used for future tasks. The flexibility of our framework makes it suitable to analyze a wide range of meta-learning mechanisms and even design new mechanisms. Other than our theoretical contributions we also show empirically that our framework improves the prediction quality in practical meta-learning mechanisms.
title More Flexible PAC-Bayesian Meta-Learning by Learning Learning Algorithms
topic Machine Learning
url https://arxiv.org/abs/2402.04054