Perturbed Model Validation: A New Framework ...
Type de document :
Pré-publication ou Document de travail
Titre :
Perturbed Model Validation: A New Framework to Validate Model Relevance
Auteur(s) :
Zhang, Jie [Auteur]
University College of London [London] [UCL]
Department of Computer science [University College of London] [UCL-CS]
Barr, Earl [Auteur]
University College of London [London] [UCL]
Guedj, Benjamin [Auteur]
Department of Computer science [University College of London] [UCL-CS]
University College of London [London] [UCL]
MOdel for Data Analysis and Learning [MODAL]
The Inria London Programme [Inria-London]
Harman, Mark [Auteur]
University College of London [London] [UCL]
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Shawe-Taylor, John [Auteur]
University College of London [London] [UCL]
Department of Computer science [University College of London] [UCL-CS]
The Inria London Programme [Inria-London]
University College of London [London] [UCL]
Department of Computer science [University College of London] [UCL-CS]
Barr, Earl [Auteur]
University College of London [London] [UCL]
Guedj, Benjamin [Auteur]
Department of Computer science [University College of London] [UCL-CS]
University College of London [London] [UCL]
MOdel for Data Analysis and Learning [MODAL]
The Inria London Programme [Inria-London]
Harman, Mark [Auteur]
University College of London [London] [UCL]
Shawe-Taylor, John [Auteur]
University College of London [London] [UCL]
Department of Computer science [University College of London] [UCL-CS]
The Inria London Programme [Inria-London]
Discipline(s) HAL :
Informatique [cs]/Apprentissage [cs.LG]
Statistiques [stat]/Machine Learning [stat.ML]
Statistiques [stat]/Machine Learning [stat.ML]
Résumé en anglais : [en]
This paper introduces Perturbed Model Validation (PMV), a new technique to validate model relevance and detect overfitting or underfitting. PMV operates by injecting noise to the training data, re-training the model against ...
Lire la suite >This paper introduces Perturbed Model Validation (PMV), a new technique to validate model relevance and detect overfitting or underfitting. PMV operates by injecting noise to the training data, re-training the model against the perturbed data, then using the training accuracy decrease rate to assess model relevance. A larger decrease rate indicates better concept-hypothesis fit. We realise PMV by perturbing labels to inject noise, and evaluate PMV on four real-world datasets (breast cancer, adult, connect-4, and MNIST) and nine synthetic datasets in the classification setting. The results reveal that PMV selects models more precisely and in a more stable way than cross-validation, and effectively detects both overfitting and underfitting.Lire moins >
Lire la suite >This paper introduces Perturbed Model Validation (PMV), a new technique to validate model relevance and detect overfitting or underfitting. PMV operates by injecting noise to the training data, re-training the model against the perturbed data, then using the training accuracy decrease rate to assess model relevance. A larger decrease rate indicates better concept-hypothesis fit. We realise PMV by perturbing labels to inject noise, and evaluate PMV on four real-world datasets (breast cancer, adult, connect-4, and MNIST) and nine synthetic datasets in the classification setting. The results reveal that PMV selects models more precisely and in a more stable way than cross-validation, and effectively detects both overfitting and underfitting.Lire moins >
Langue :
Anglais
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