Design of experiments and machine learning with application to industrial experiments

Author:

Fontana RobertoORCID,Molena Alberto,Pegoraro Luca,Salmaso Luigi

Abstract

AbstractIn the context of product innovation, there is an emerging trend to use Machine Learning (ML) models with the support of Design Of Experiments (DOE). The paper aims firstly to review the most suitable designs and ML models to use jointly in an Active Learning (AL) approach; it then reviews ALPERC, a novel AL approach, and proves the validity of this method through a case study on amorphous metallic alloys, where this algorithm is used in combination with a Random Forest model.

Funder

Politecnico di Torino

Publisher

Springer Science and Business Media LLC

Subject

Statistics, Probability and Uncertainty,Statistics and Probability

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