An Effective Meaningful Way to Evaluate Survival Models.

Shi-Ang Qi, Neeraj Kumar, Mahtab Farrokh, Weijie Sun, Li-Hao Kuan, Rajesh Ranganath, Ricardo Henao, Russell Greiner
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Abstract

One straightforward metric to evaluate a survival prediction model is based on the Mean Absolute Error (MAE) - the average of the absolute difference between the time predicted by the model and the true event time, over all subjects. Unfortunately, this is challenging because, in practice, the test set includes (right) censored individuals, meaning we do not know when a censored individual actually experienced the event. In this paper, we explore various metrics to estimate MAE for survival datasets that include (many) censored individuals. Moreover, we introduce a novel and effective approach for generating realistic semi-synthetic survival datasets to facilitate the evaluation of metrics. Our findings, based on the analysis of the semi-synthetic datasets, reveal that our proposed metric (MAE using pseudo-observations) is able to rank models accurately based on their performance, and often closely matches the true MAE - in particular, is better than several alternative methods.

一种评估生存模型的有效而有意义的方法。
评估生存预测模型的一个直接指标是基于平均绝对误差(MAE)——模型预测的时间与真实事件时间之间的绝对差的平均值,在所有受试者中。不幸的是,这是具有挑战性的,因为在实践中,测试集包括(右)被审查的个体,这意味着我们不知道被审查的个体何时真正经历了事件。在本文中,我们探索了各种指标来估计生存数据集的MAE,其中包括(许多)被审查的个体。此外,我们引入了一种新颖有效的方法来生成现实的半合成生存数据集,以促进指标的评估。我们的研究结果,基于对半合成数据集的分析,揭示了我们提出的度量(使用伪观测的MAE)能够根据模型的性能准确地对模型进行排名,并且通常与真实的MAE非常接近-特别是,比几种替代方法更好。
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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