Multivariate prediction intervals for bagged models

Accurate uncertainty estimates can significantly improve the performance of iterative design of experiments, as in sequential and reinforcement learning. For many such problems in engineering and the physical sciences, the design task depends on multiple correlated model outputs as objectives and/or...

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Veröffentlicht in:Machine learning: science and technology 2023-03, Vol.4 (1), p.15022
Hauptverfasser: Folie, Brendan, Hutchinson, Maxwell
Format: Artikel
Sprache:eng
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Zusammenfassung:Accurate uncertainty estimates can significantly improve the performance of iterative design of experiments, as in sequential and reinforcement learning. For many such problems in engineering and the physical sciences, the design task depends on multiple correlated model outputs as objectives and/or constraints. To better solve these problems, we propose a recalibrated bootstrap method to generate multivariate prediction intervals for bagged models such as random forest and show that it is well-calibrated. We apply the recalibrated bootstrap to a simulated sequential learning problem with multiple objectives and show that it leads to a marked decrease in the number of iterations required to find a satisfactory candidate. This indicates that the recalibrated bootstrap could be a valuable tool for practitioners using machine learning to optimize systems with multiple competing targets.
ISSN:2632-2153
2632-2153
DOI:10.1088/2632-2153/acb9d5