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Holistic deep learning

Authors :
Sloan School of Management
Massachusetts Institute of Technology. Operations Research Center
Bertsimas, Dimitris
Villalobos Carballo, Kimberly
Boussioux, Léonard
Li, Michael L.
Paskov, Alex
Paskov, Ivan
Sloan School of Management
Massachusetts Institute of Technology. Operations Research Center
Bertsimas, Dimitris
Villalobos Carballo, Kimberly
Boussioux, Léonard
Li, Michael L.
Paskov, Alex
Paskov, Ivan
Source :
Springer US
Publication Year :
2023

Abstract

This paper presents a novel holistic deep learning framework that simultaneously addresses the challenges of vulnerability to input perturbations, overparametrization, and performance instability from different train-validation splits. The proposed framework holistically improves accuracy, robustness, sparsity, and stability over standard deep learning models, as demonstrated by extensive experiments on both tabular and image data sets. The results are further validated by ablation experiments and SHAP value analysis, which reveal the interactions and trade-offs between the different evaluation metrics. To support practitioners applying our framework, we provide a prescriptive approach that offers recommendations for selecting an appropriate training loss function based on their specific objectives. All the code to reproduce the results can be found at https://github.com/kimvc7/HDL

Details

Database :
OAIster
Journal :
Springer US
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1434012007
Document Type :
Electronic Resource