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Efficient support vector machine method for survival prediction with SEER data.

机译:利用SEER数据进行生存预测的有效支持向量机方法。

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摘要

Support vector machine (SVM) is a popular method for classification, but there are few methods that utilize SVM for survival analysis in the literature because of the computational complexity. In this paper, we develop a novel [Formula: see text] penalized SVM method for mining right-censored survival data ([Formula: see text] SVMSURV). Our proposed method can simultaneously identify survival-associated prognostic factors and predict survival outcomes. It is easy to understand and efficient to use especially when applied to large datasets. Our method has been examined through both simulation and real data, and its performance is very good with limited experiments.
机译:支持向量机(SVM)是一种流行的分类方法,但是由于计算复杂性,在文献中很少有将SVM用于生存分析的方法。在本文中,我们开发了一种新颖的[SVMSURV]惩罚式SVM方法,用于挖掘右删失的生存数据。我们提出的方法可以同时识别与生存相关的预后因素,并预测生存结果。它易于理解且使用高效,尤其是应用于大型数据集时。我们的方法已经通过仿真和实际数据进行了检验,在有限的实验中其性能非常好。

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