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PAC-Bayes Unleashed: Generalisation Bounds with Unbounded Losses

Maxime Haddouche

2021MDPI (MDPI AG)21 citationsDOIOpen Access PDF

Abstract

We present new PAC-Bayesian generalisation bounds for learning problems with unbounded loss functions. This extends the relevance and applicability of the PAC-Bayes learning framework, where most of the existing literature focuses on supervised learning problems with a bounded loss function (typically assumed to take values in the interval [0;1]). In order to relax this classical assumption, we propose to allow the range of the loss to depend on each predictor. This relaxation is captured by our new notion of HYPothesis-dependent rangE (HYPE). Based on this, we derive a novel PAC-Bayesian generalisation bound for unbounded loss functions, and we instantiate it on a linear regression problem. To make our theory usable by the largest audience possible, we include discussions on actual computation, practicality and limitations of our assumptions.

Topics & Concepts

Computer scienceBayes' theoremRange (aeronautics)Bounded functionUSableBayesian probabilityComputationFunction (biology)Relevance (law)Interval (graph theory)AlgorithmMachine learningArtificial intelligenceMathematicsApplied mathematicsCombinatoricsWorld Wide WebMathematical analysisLawMaterials scienceBiologyComposite materialPolitical scienceEvolutionary biologyMachine Learning and AlgorithmsBayesian Modeling and Causal InferenceMachine Learning and Data Classification
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