2024
DOI: 10.1002/mgea.35
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An ensemble learning strategy for multi‐source hydrogen embrittlement data by introducing missing information

Xujie Gong,
Ruichao Lei,
Ruize Sun
et al.

Abstract: Accurately and quickly predicting hydrogen embrittlement performance is critical for the service of metal materials. However, due to multi‐source heterogeneity, existing hydrogen embrittlement data are missing, making it impractical to train reliable machine learning models. In this study, we proposed an ensemble learning training strategy for missing data based on the Adaboost algorithm. This method introduced a mask matrix with missing data and enabled each round of training to generate sub‐datasets, conside… Show more

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