Fair admission risk prediction with proportional multicalibration.

William G La Cava, Elle Lett, Guangya Wan
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Abstract

Fair calibration is a widely desirable fairness criteria in risk prediction contexts. One way to measure and achieve fair calibration is with multicalibration. Multicalibration constrains calibration error among flexibly-defined subpopulations while maintaining overall calibration. However, multicalibrated models can exhibit a higher percent calibration error among groups with lower base rates than groups with higher base rates. As a result, it is possible for a decision-maker to learn to trust or distrust model predictions for specific groups. To alleviate this, we propose proportional multicalibration, a criteria that constrains the percent calibration error among groups and within prediction bins. We prove that satisfying proportional multicalibration bounds a model's multicalibration as well its differential calibration, a fairness criteria that directly measures how closely a model approximates sufficiency. Therefore, proportionally calibrated models limit the ability of decision makers to distinguish between model performance on different patient groups, which may make the models more trustworthy in practice. We provide an efficient algorithm for post-processing risk prediction models for proportional multicalibration and evaluate it empirically. We conduct simulation studies and investigate a real-world application of PMC-postprocessing to prediction of emergency department patient admissions. We observe that proportional multicalibration is a promising criteria for controlling simultaneous measures of calibration fairness of a model over intersectional groups with virtually no cost in terms of classification performance.

比例多重校准的公平入场风险预测。
在风险预测中,公平校准是一个广泛需要的公平标准。一种测量和实现公平校准的方法是多重校准。在保持整体校准的同时,多重校准约束了灵活定义的子种群之间的校准误差。然而,多校准模型在基率较低的组中比在基率较高的组中显示出更高百分比的校准误差。因此,决策者有可能学会信任或不信任特定群体的模型预测。为了缓解这种情况,我们提出了比例多重校准,这是一种限制组间和预测箱内校准误差百分比的标准。我们证明了满足比例多重校准边界的模型的多重校准以及它的微分校准,这是一个公平的准则,直接衡量一个模型接近的程度。因此,比例校准模型限制了决策者区分模型在不同患者群体上的表现的能力,这可能使模型在实践中更值得信赖。提出了一种有效的比例多重校准后处理风险预测模型算法,并对其进行了实证评价。我们进行了模拟研究,并调查了pmc -后处理在预测急诊科患者入院方面的实际应用。我们观察到,比例多重校准是一个很有前途的标准,用于控制模型在交叉组上的校准公平性的同时测量,在分类性能方面几乎没有成本。
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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