We introduce a framework based on bilevel programming that unifies gradient-based hyperparameter optimization and meta-learning. We show that an approximate version of the bilevel problem can be solved by taking into explicit account the optimization dynamics for the inner objective. Depending on the specific setting, the outer variables take either the meaning of hyperparameters in a supervised learning problem or parameters of a meta-learner. We provide sufficient conditions under which solutions of the approximate problem converge to those of the exact problem. We instantiate our approach for meta-learning in the case of deep learning where representation layers are treated as hyperparameters shared across a set of training episodes. In experiments, we confirm our theoretical findings, present encouraging results for few-shot learning and contrast the bilevel approach against classical approaches for learning-to-learn.

Bilevel Programming for Hyperparameter Optimization and Meta-Learning / Franceschi, L; Frasconi, P; Salzo, S; Grazzi, R; Pontil, M. - 80:(2018), pp. 1568-1577. ( International Conference on Machine Learning (ICML) Stockholm Sweden ).

Bilevel Programming for Hyperparameter Optimization and Meta-Learning

Salzo S;
2018

Abstract

We introduce a framework based on bilevel programming that unifies gradient-based hyperparameter optimization and meta-learning. We show that an approximate version of the bilevel problem can be solved by taking into explicit account the optimization dynamics for the inner objective. Depending on the specific setting, the outer variables take either the meaning of hyperparameters in a supervised learning problem or parameters of a meta-learner. We provide sufficient conditions under which solutions of the approximate problem converge to those of the exact problem. We instantiate our approach for meta-learning in the case of deep learning where representation layers are treated as hyperparameters shared across a set of training episodes. In experiments, we confirm our theoretical findings, present encouraging results for few-shot learning and contrast the bilevel approach against classical approaches for learning-to-learn.
2018
International Conference on Machine Learning (ICML)
hyperparameter optimization, meta learning, bilevel optimization
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Bilevel Programming for Hyperparameter Optimization and Meta-Learning / Franceschi, L; Frasconi, P; Salzo, S; Grazzi, R; Pontil, M. - 80:(2018), pp. 1568-1577. ( International Conference on Machine Learning (ICML) Stockholm Sweden ).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1654512
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