Latent variable Gaussian process models: a rank-based analysis and an alternative approach
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Publication:6555541
DOI10.1002/NME.6690zbMATH Open1548.65031MaRDI QIDQ6555541
Daniel W. Apley, Matthew Plumlee, Wei Chen, Siyu Tao
Publication date: 14 June 2024
Published in: International Journal for Numerical Methods in Engineering (Search for Journal in Brave)
Probabilistic models, generic numerical methods in probability and statistics (65C20) Response surface designs (62K20)
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