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On the Calibration of Aggregated Conformal Predictors

机译:聚合适形预测器的标定

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Conformal prediction is a learning framework that produces models that associate with each of their predictions a measure of statistically valid confidence. These models are typically constructed on top of traditional machine learning algorithms. An important result of conformal prediction theory is that the models produced are provably valid under relatively weak assumptions—in particular, their validity is independent of the specific underlying learning algorithm on which they are based. Since validity is automatic, much research on conformal predictors has been focused on improving their informational and computational efficiency. As part of the efforts in constructing efficient conformal predictors, aggregated conformal predictors were developed, drawing inspiration from the field of classification and regression ensembles. Unlike early definitions of conformal prediction procedures, the validity of aggregated conformal predictors is not fully understood—while it has been shown that they might attain empirical exact validity under certain circumstances, their theoretical validity is conditional on additional assumptions that require further clarification. In this paper, we show why validity is not automatic for aggregated conformal predictors, and provide a revised definition of aggregated conformal predictors that gains approximate validity conditional on properties of the underlying learning algorithm.
机译:适形预测是一个学习框架,可生成与每个预测相关联的模型,这些模型是统计有效置信度的量度。这些模型通常基于传统的机器学习算法构建。保形预测理论的重要结果是,所产生的模型在相对较弱的假设下可证明是有效的,尤其是其有效性独立于它们所基于的特定基础学习算法。由于有效性是自动的,因此关于保形预测变量的许多研究都集中在提高其信息和计算效率上。作为构建有效的共形预测变量的一部分,开发了聚集的共形预测变量,从分类和回归集成领域中汲取了灵感。与早期的共形预测程序定义不同,聚合的共形预测变量的有效性尚不完全清楚,尽管已证明它们在某些情况下可能达到经验上的精确有效性,但其理论有效性取决于需要进一步阐明的其他假设。在本文中,我们说明了为什么聚合的共形预测变量的有效性不是自动的,并提供了聚合的共形预测变量的修订定义,该定义获得了基于基础学习算法的属性的近似有效性。

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