A core principle in statistical learning is that smoothness of target functions allows to break the curse of dimensionality. However, learning a smooth function seems to require enough samples close to one another to get meaningful estimate of high-order derivatives, which would be hard in machine learning problems where the ratio between number of data and input dimension is relatively small. By deriving new lower bounds on the generalization error, this paper formalizes such an intuition, before investigating the role of constants and transitory regimes which are usually not depicted beyond classical learning theory statements while they play a dominant role in practice.

Cabannes, V., Vigogna, S. (2023). How many samples are needed to leverage smoothness?. In Advances in Neural Information Processing Systems. Neural information processing systems foundation.

How many samples are needed to leverage smoothness?

Vigogna S.
2023-01-01

Abstract

A core principle in statistical learning is that smoothness of target functions allows to break the curse of dimensionality. However, learning a smooth function seems to require enough samples close to one another to get meaningful estimate of high-order derivatives, which would be hard in machine learning problems where the ratio between number of data and input dimension is relatively small. By deriving new lower bounds on the generalization error, this paper formalizes such an intuition, before investigating the role of constants and transitory regimes which are usually not depicted beyond classical learning theory statements while they play a dominant role in practice.
37th Conference on Neural Information Processing Systems, NeurIPS 2023
Ernest N. Morial Convention Center, usa
2023
37
Rilevanza internazionale
2023
Settore MAT/06
English
Intervento a convegno
Cabannes, V., Vigogna, S. (2023). How many samples are needed to leverage smoothness?. In Advances in Neural Information Processing Systems. Neural information processing systems foundation.
Cabannes, V; Vigogna, S
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/361678
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