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Communication Dans Un Congrès Année : 2019

Embedded Constrained Feature Construction for High-Energy Physics Data Classification

Résumé

Before any publication, data analysis of high-energy physics experiments must be validated. This validation is granted only if a perfect understanding of the data and the analysis process is demonstrated. Therefore, physicists prefer using transparent machine learning algorithms whose performances highly rely on the suitability of the provided input features. To transform the feature space, feature construction aims at automatically generating new relevant features. Whereas most of previous works in this area perform the feature construction prior to the model training, we propose here a general framework to embed a feature construction technique adapted to the constraints of high-energy physics in the induction of tree-based models. Experiments on two high-energy physics datasets confirm that a significant gain is obtained on the classification scores, while limiting the number of built features. Since the features are built to be interpretable, the whole model is transparent and readable.
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Dates et versions

hal-03644799 , version 1 (19-04-2022)

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Noëlie Cherrier, Maxime Defurne, Jean-Philippe Poli, Franck Sabatié. Embedded Constrained Feature Construction for High-Energy Physics Data Classification. 33rd Annual Conference on Neural Information Processing Systems, Dec 2019, Vancouver, Canada. ⟨hal-03644799⟩
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