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Uncertainty quantification in extreme learning machine: Analytical developments, variance estimates and confidence intervals

机译:极端学习机中的不确定性量化:分析发展,方差估计和置信区间

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摘要

Uncertainty quantification is crucial to assess prediction quality of a machine learning model. In the case of Extreme Learning Machines (ELM), most methods proposed in the literature make strong assumptions on the data, ignore the randomness of input weights or neglect the bias contribution in confidence interval estimations. This paper presents novel estimations that overcome these constraints and improve the understanding of ELM variability. Analytical derivations are provided under general assumptions, supporting the identification and the interpretation of the contribution of different variability sources. Under both homoskedasticity and heteroskedasticity, several variance estimates are proposed, investigated, and numerically tested, showing their effectiveness in replicating the expected variance behaviours. Finally, the feasibility of confidence intervals estimation is discussed by adopting a critical approach, hence raising the awareness of ELM users concerning some of their pitfalls. The paper is accompanied with a scikit-learn compatible Python library enabling efficient computation of all estimates discussed herein. (c) 2021 The Author(s). Published by Elsevier B.V. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
机译:不确定性量化对于评估机器学习模型的预测质量至关重要。在极端学习机(ELM)的情况下,文献中提出的大多数方法对数据产生了强烈的假设,忽略输入权重的随机性或忽略置信区间估计的偏置贡献。本文介绍了克服这些限制的新颖估计,提高了对榆树变异性的理解。在一般假设下提供分析推导,支持识别和解释不同可变性来源的贡献。在HomoskEmasticity和异源性瘢痕度下,提出了几种方差估计,研究和数值测试,显示了它们在复制预期方差行为方面的有效性。最后,通过采用批判方法讨论了置信区间估计的可行性,从而提高了榆树用户关于他们一些陷阱的认识。本文伴随着SCICIT-GROOD兼容Python库,其能够有效地计算本文讨论的所有估计值。 (c)2021提交人。由elsevier b.v发布。这是CC下的开放式访问文章(http://creativecommons.org/licenses/by/4.0/)。

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