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Nearest Neighbor and Kernel Survival Analysis: Nonasymptotic Error Bounds and Strong Consistency Rates

机译:最近的邻居和核生存分析:非因思误差界和强的一致性率

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We establish the first nonasymptotic error bounds for Kaplan-Meier-based nearest neighbor and kernel survival probability estimators where feature vectors reside in metric spaces. Our bounds imply rates of strong consistency for these nonparametric estimators and, up to a log factor, match an existing lower bound for conditional CDF estimation. Our proof strategy also yields nonasymptotic guarantees for nearest neighbor and kernel variants of the Nelson-Aalen cumulative hazards estimator. We experimentally compare these methods on four datasets. We find that for the kernel survival estimator, a good choice of kernel is one learned using random survival forests.
机译:我们建立了基于Kaplan-Meier的最近邻居和内核生存概率估计的第一个令人反应性错误界限,其中特征向量驻留在公制空间中。我们的界限意味着这些非参数估计器的强持续性的速度,并且最多达到日志因子,匹配条件CDF估计的现有下限。我们的证明策略还产生了Nelson-Aalen累积危险估算器的最近邻居和内核变异的令人反感保障。我们通过实验在四个数据集上比较这些方法。我们发现,对于内核生存估算器,良好选择的内核是使用随机生存森林学习的。

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