Towards the Best Solution for Complex System Reliability: Can Statistics Outperform Machine Learning?
Permanent lenke
https://hdl.handle.net/10037/36231Dato
2024-12-11Type
Journal articleTidsskriftartikkel
Peer reviewed
Forfatter
Gámiz, María Luz; Navas-Gómez, Fernando; Nozal Canadas, Rafael Adolfo; Raya-Miranda, RocíoSammendrag
Studying the reliability of complex systems using machine learning techniques involves
facing a series of technical and practical challenges, ranging from the intrinsic nature of the system
and data to the difficulties in modeling and effectively deploying models in real-world scenarios. This
study compares the effectiveness of classical statistical techniques and machine learning methods
for improving complex system analysis in reliability assessments. Our goal is to show that in
many practical applications, traditional statistical algorithms frequently produce more accurate
and interpretable results compared with black-box machine learning methods. The evaluation is
conducted using both real-world data and simulated scenarios. We report the results obtained from
statistical modeling algorithms, as well as from machine learning methods including neural networks,
K-nearest neighbors, and random forests.
Forlag
MDPISitering
Gámiz, Navas-Gómez, Nozal Canadas, Raya-Miranda. Towards the Best Solution for Complex System Reliability: Can Statistics Outperform Machine Learning?. Machines. 2024;12(12)Metadata
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