SIBILA: Automated Machine-Learning-Based Development of Interpretable Machine-Learning Models on High-Performance Computing Platforms
Fecha
2024-11-14Disciplina/s
Ingeniería, Industria y ConstrucciónMateria/s
Explainable machine learningData fusion
Automated machine learning
High-performance computing
Deep learning
Consensus
Resumen
As machine learning (ML) transforms industries, the need for efficient model development tools using high-performance computing (HPC) and ensuring interpretability is crucial. This paper presents SIBILA, an AutoML approach designed for HPC environments, focusing on the interpretation of ML models. SIBILA simplifies model development by allowing users to set objectives and preferences before automating the search for optimal ML pipelines. Unlike traditional AutoML frameworks, SIBILA is specifically designed to exploit the computational capabilities of HPC platforms, thereby accelerating the model search and evaluation phases. The emphasis on interpretability is particularly crucial when model transparency is mandated by regulations or desired for stakeholder understanding. SIBILA has been validated in different tasks with public datasets. The results demonstrate that SIBILA consistently produces models with competitive accuracy while significantly reducing computational overhead. This m...
Colecciones
Excepto si se señala otra cosa, la licencia del ítem se describe como Attribution-NonCommercial-NoDerivatives 4.0 Internacional
Ítems relacionados
Mostrando ítems relacionados por Título, autor o materia.
-
La gestión de equipos de trabajo y productos radiofónicos en las radios universitarias
García González, Isabel María; Robles Andreu, María Carmen; Correyero Ruiz, Beatriz (2016) -
Assessment of Volleyball Technical Learning Using Peer Observational Methodology in University Students
Álvarez Medina, Javier; Murillo Lorente, Víctor; Casterad Seral, Jaime; Nuviala Nuviala, Alberto (2022) -
Teamwork in initial teacher training
Aparicio Herguedas, José Luis; Velázquez Callado, Carlos; Fraile Aranda, Antonio (2021)





