ML systems have become an essential tool for experts of many domains, data scientists and researchers, allowing them to nd answers to many complex business questions starting from raw datasets. Nevertheless, the development of ML systems able to satisfy the stakeholders' needs requires an appropriate amount of knowledge about the ML domain. Over the years, several solutions have been proposed to automate the development of ML systems. However, an approach taking into account the new quality concerns needed by ML systems (like fairness, interpretability, privacy, and others) is still missing. In this paper, we propose a new engineering approach for the qualitybased development of ML systems by realizing a work ow formalized as a Software Product Line through Extended Feature Models to generate an ML System satisfying the required quality constraints. The proposed approach leverages an experimental environment that applies all the settings to enhance a given Quality Attribute, and selects the best one. The experimental environment is general and can be used for future quality methods' evaluations. Finally, we demonstrate the usefulness of our approach in the context of multi-class classi cation problem and fairness quality attribute.

D'Aloisio, G.; Di Marco, A.; Stilo, Giovanni. (2023). Democratizing Quality-Based Machine Learning Development through Extended Feature Models. In Fundamental Approaches to Software Engineering - 26th International Conference, FASE 2023 (pp. 88- 110). Isbn: 978-3-031-30825-3. Isbn: 978-3-031-30826-0. Doi: 10.1007/978-3-031-30826-0_5. https://link.springer.com/chapter/10.1007/978-3-031-30826-0_5.

Democratizing Quality-Based Machine Learning Development through Extended Feature Models

Stilo G.
Methodology
2023

Abstract

ML systems have become an essential tool for experts of many domains, data scientists and researchers, allowing them to nd answers to many complex business questions starting from raw datasets. Nevertheless, the development of ML systems able to satisfy the stakeholders' needs requires an appropriate amount of knowledge about the ML domain. Over the years, several solutions have been proposed to automate the development of ML systems. However, an approach taking into account the new quality concerns needed by ML systems (like fairness, interpretability, privacy, and others) is still missing. In this paper, we propose a new engineering approach for the qualitybased development of ML systems by realizing a work ow formalized as a Software Product Line through Extended Feature Models to generate an ML System satisfying the required quality constraints. The proposed approach leverages an experimental environment that applies all the settings to enhance a given Quality Attribute, and selects the best one. The experimental environment is general and can be used for future quality methods' evaluations. Finally, we demonstrate the usefulness of our approach in the context of multi-class classi cation problem and fairness quality attribute.
2023
978-3-031-30825-3
978-3-031-30826-0
Machine Learning System; Software Quality; Feature Models; Software Product Line; Low-code development
D'Aloisio, G.; Di Marco, A.; Stilo, Giovanni. (2023). Democratizing Quality-Based Machine Learning Development through Extended Feature Models. In Fundamental Approaches to Software Engineering - 26th International Conference, FASE 2023 (pp. 88- 110). Isbn: 978-3-031-30825-3. Isbn: 978-3-031-30826-0. Doi: 10.1007/978-3-031-30826-0_5. https://link.springer.com/chapter/10.1007/978-3-031-30826-0_5.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11385/252825
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