使用随机生存森林的适形预测

Henrik Boström, L. Asker, R. Gurung, Isak Karlsson, Tony Lindgren, P. Papapetrou
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引用次数: 7

摘要

随机生存森林构成了一种强大的生存建模方法,即预测事件在给定时间点之前或在给定时间点发生的概率。与大多数标准预测模型类似,此模型不保证预测误差,而是通常进行经验评估。共形预测是一个相当新的框架,它允许模型的误差由用户指定的置信度来确定,这是通过考虑集合预测而不是点预测来实现的。这个框架,已经应用于一些最流行的分类和回归技术,在这里第一次应用于生存建模,通过随机生存森林。提出了一项实证调查,其中该技术对来自两个现实世界应用的数据集进行了评估;使用操作数据预测卡车部件故障,并根据行政保健数据预测心力衰竭患者的生存和治疗。实验结果表明,在共形预测框架的保证下,误差水平确实非常接近所提供的置信水平,并且预测每个结果(即事件或无事件)的误差可以单独控制。然而,后者可能导致信息较少的预测,即,在类别分布严重不平衡的情况下,更大的预测集。
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Conformal Prediction Using Random Survival Forests
Random survival forests constitute a robust approach to survival modeling, i.e., predicting the probability that an event will occur before or on a given point in time. Similar to most standard predictive models, no guarantee for the prediction error is provided for this model, which instead typically is empirically evaluated. Conformal prediction is a rather recent framework, which allows the error of a model to be determined by a user specified confidence level, something which is achieved by considering set rather than point predictions. The framework, which has been applied to some of the most popular classification and regression techniques, is here for the first time applied to survival modeling, through random survival forests. An empirical investigation is presented where the technique is evaluated on datasets from two real-world applications; predicting component failure in trucks using operational data and predicting survival and treatment of heart failure patients from administrative healthcare data. The experimental results show that the error levels indeed are very close to the provided confidence levels, as guaranteed by the conformal prediction framework, and that the error for predicting each outcome, i.e., event or no-event, can be controlled separately. The latter may, however, lead to less informative predictions, i.e., larger prediction sets, in case the class distribution is heavily imbalanced.
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