Interval predictor models with a formal characterization of uncertainty and reliability

L. Crespo, D. Giesy, S. Kenny
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引用次数: 21

Abstract

This paper develops techniques for constructing empirical predictor models based on observations. By contrast to standard models, which yield a single predicted output at each value of the model's inputs, Interval Predictors Models (IPM) yield an interval into which the unobserved output is predicted to fall. The IPMs proposed prescribe the output as an interval valued function of the model's inputs, render a formal description of both the uncertainty in the model's parameters and of the spread in the predicted output. Uncertainty is prescribed as a hyper-rectangular set in the space of model's parameters. The propagation of this set through the empirical model yields a range of outputs of minimal spread containing all (or, depending on the formulation, most) of the observations. Optimization-based strategies for calculating IPMs and eliminating the effects of outliers are proposed. Outliers are identified by evaluating the extent by which they degrade the tightness of the prediction. This evaluation can be carried out while the IPM is calculated. When the data satisfies mild stochastic assumptions, and the optimization program used for calculating the IPM is convex (or, when its solution coincides with the solution to an auxiliary convex program), the model's reliability (that is, the probability that a future observation would be within the predicted range of outputs) can be bounded rigorously by a non-asymptotic formula.
具有不确定性和可靠性形式化表征的区间预测模型
本文发展了基于观测构建经验预测模型的技术。标准模型在模型的每个输入值上产生一个预测输出,与之相反,区间预测模型(IPM)产生一个预测未观察到的输出的区间。提出的ipm将输出规定为模型输入的区间值函数,对模型参数的不确定性和预测输出的分布进行了正式描述。不确定性被规定为模型参数空间中的超矩形集合。该集合通过经验模型的传播产生一系列最小扩展的输出,其中包含所有(或,取决于公式,大多数)观测值。提出了基于优化的ipm计算策略和排除异常值的影响。通过评估异常值降低预测严密性的程度来识别异常值。这种评估可以在计算IPM时进行。当数据满足温和的随机假设,并且用于计算IPM的优化程序是凸的(或者,当它的解与辅助凸程序的解相吻合时),模型的可靠性(即未来观测值在预测输出范围内的概率)可以由一个非渐近公式严格限定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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