选择性标签问题:在不可观测的存在下评估算法预测。

Himabindu Lakkaraju, Jon Kleinberg, Jure Leskovec, Jens Ludwig, Sendhil Mullainathan
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引用次数: 125

摘要

评估机器是否能提高人类的表现是机器学习的核心问题之一。然而,在许多领域中,数据被选择性地标记,因为观察到的结果本身就是人类决策者现有选择的结果。例如,在司法保释决定的背景下,只有当人类法官决定保释被告时,我们才会观察被告是否没有出庭的结果。这种选择性标记使得评估预测模型变得更加困难,因为观察到结果的实例并不代表总体的随机样本。在这里,我们提出了一个新的框架来评估选择性标记数据上预测模型的性能。我们开发了一种称为收缩的方法,它允许我们在不诉诸反事实推理的情况下比较预测模型和人类决策者的表现。我们的方法利用了人类决策者的异质性,即使在影响人类决策和结果的不可测量混杂因素(不可观察因素)存在的情况下,也能促进预测模型的有效评估。在跨越不同领域(如医疗保健、保险和刑事司法)的真实世界数据集上的实验结果证明了我们的评估指标在比较人类决策和机器预测方面的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

The Selective Labels Problem: Evaluating Algorithmic Predictions in the Presence of Unobservables.

The Selective Labels Problem: Evaluating Algorithmic Predictions in the Presence of Unobservables.

The Selective Labels Problem: Evaluating Algorithmic Predictions in the Presence of Unobservables.

Evaluating whether machines improve on human performance is one of the central questions of machine learning. However, there are many domains where the data is selectively labeled in the sense that the observed outcomes are themselves a consequence of the existing choices of the human decision-makers. For instance, in the context of judicial bail decisions, we observe the outcome of whether a defendant fails to return for their court appearance only if the human judge decides to release the defendant on bail. This selective labeling makes it harder to evaluate predictive models as the instances for which outcomes are observed do not represent a random sample of the population. Here we propose a novel framework for evaluating the performance of predictive models on selectively labeled data. We develop an approach called contraction which allows us to compare the performance of predictive models and human decision-makers without resorting to counterfactual inference. Our methodology harnesses the heterogeneity of human decision-makers and facilitates effective evaluation of predictive models even in the presence of unmeasured confounders (unobservables) which influence both human decisions and the resulting outcomes. Experimental results on real world datasets spanning diverse domains such as health care, insurance, and criminal justice demonstrate the utility of our evaluation metric in comparing human decisions and machine predictions.

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