校准
计算机科学
不确定度量化
差异(会计)
航程(航空)
回归
机器学习
集成学习
领域(数学)
敏感性分析
回归分析
数据挖掘
不确定度分析
人工智能
统计
数学
模拟
工程类
会计
业务
航空航天工程
纯数学
作者
Glenn Palmer,Siqi Du,Alexander Politowicz,Joshua Paul Emory,Xiyu Yang,Anupraas Gautam,G S Gupta,Zhelong Li,Ryan Jacobs,Dane Morgan
标识
DOI:10.1038/s41524-022-00794-8
摘要
Abstract Obtaining accurate estimates of machine learning model uncertainties on newly predicted data is essential for understanding the accuracy of the model and whether its predictions can be trusted. A common approach to such uncertainty quantification is to estimate the variance from an ensemble of models, which are often generated by the generally applicable bootstrap method. In this work, we demonstrate that the direct bootstrap ensemble standard deviation is not an accurate estimate of uncertainty but that it can be simply calibrated to dramatically improve its accuracy. We demonstrate the effectiveness of this calibration method for both synthetic data and numerous physical datasets from the field of Materials Science and Engineering. The approach is motivated by applications in physical and biological science but is quite general and should be applicable for uncertainty quantification in a wide range of machine learning regression models.
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