Learning Survival Distributions with the Asymmetric Laplace Distribution.

Deming Sheng, Ricardo Henao
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引用次数: 0

Abstract

Probabilistic survival analysis models seek to estimate the distribution of the future occurrence (time) of an event given a set of covariates. In recent years, these models have preferred nonparametric specifications that avoid directly estimating survival distributions via discretization. Specifically, they estimate the probability of an individual event at fixed times or the time of an event at fixed probabilities (quantiles), using supervised learning. Borrowing ideas from the quantile regression literature, we propose a parametric survival analysis method based on the Asymmetric Laplace Distribution (ALD). This distribution allows for closed-form calculation of popular event summaries such as mean, median, mode, variation, and quantiles. The model is optimized by maximum likelihood to learn, at the individual level, the parameters (location, scale, and asymmetry) of the ALD distribution. Extensive results on synthetic and real-world data demonstrate that the proposed method outperforms parametric and nonparametric approaches in terms of accuracy, discrimination and calibration.

用非对称拉普拉斯分布学习生存分布。
概率生存分析模型试图估计给定一组协变量的事件未来发生(时间)的分布。近年来,这些模型更倾向于非参数规范,避免通过离散化直接估计生存分布。具体来说,他们使用监督学习来估计固定时间内单个事件的概率或固定概率(分位数)下事件发生的时间。借鉴分位数回归文献的思想,提出了一种基于非对称拉普拉斯分布(ALD)的参数生存分析方法。这种分布允许对流行事件摘要(如平均值、中位数、众数、变异和分位数)进行封闭式计算。该模型通过最大似然学习来优化,在个体层面,ALD分布的参数(位置,规模和不对称性)。合成数据和实际数据的广泛结果表明,该方法在精度、判别和校准方面优于参数和非参数方法。
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