Maximum Likelihood Estimation of Flexible Survival Densities with Importance Sampling.

Mert Ketenci, Shreyas Bhave, Noémie Elhadad, Adler Perotte
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Abstract

Survival analysis is a widely-used technique for analyzing time-to-event data in the presence of censoring. In recent years, numerous survival analysis methods have emerged which scale to large datasets and relax traditional assumptions such as proportional hazards. These models, while being performant, are very sensitive to model hyperparameters including: (1) number of bins and bin size for discrete models and (2) number of cluster assignments for mixture-based models. Each of these choices requires extensive tuning by practitioners to achieve optimal performance. In addition, we demonstrate in empirical studies that: (1) optimal bin size may drastically differ based on the metric of interest (e.g., concordance vs brier score), and (2) mixture models may suffer from mode collapse and numerical instability. We propose a survival analysis approach which eliminates the need to tune hyperparameters such as mixture assignments and bin sizes, reducing the burden on practitioners. We show that the proposed approach matches or outperforms baselines on several real-world datasets.

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利用重要性采样对灵活生存密度进行最大似然估计
生存分析是一种广泛使用的技术,用于分析存在剔除的时间到事件数据。近年来,出现了许多生存分析方法,这些方法可扩展到大型数据集,并放宽了比例危险等传统假设。这些模型虽然性能优越,但对模型超参数非常敏感,包括:(1) 离散模型的箱数和箱大小;(2) 基于混合模型的聚类分配数。这些选择中的每一个都需要实践者进行大量的调整才能达到最佳性能。此外,我们还通过实证研究证明了以下几点:(1) 最佳分仓大小可能会因相关指标(如一致性与布赖尔得分)的不同而大相径庭,(2) 混合物模型可能会出现模式崩溃和数值不稳定性。我们提出的生存分析方法无需调整混合分配和分仓大小等超参数,从而减轻了从业人员的负担。我们的研究表明,在几个真实世界数据集上,我们提出的方法与基线相匹配,甚至优于基线。
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