Generalized Multi-Output Gaussian Process Censored Regression

@article{Gammelli2022GeneralizedMG,
title={Generalized Multi-Output Gaussian Process Censored Regression},
author={Daniele Gammelli and Kasper Pryds Rolsted and Dario Pacino and Filipe Rodrigues},
journal={Pattern Recognit.},
year={2022},
volume={129},
pages={108751}
}
• Published 10 September 2020
• Computer Science, Mathematics
• Pattern Recognit.
2 Citations

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