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Classification in Non-linear Survival Models Using Cox Regression and Decision Tree

机译:基于Cox回归和决策树的非线性生存模型分类

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摘要

Classification is the most important issues that have gained much attention in various fields such as health and medicine. Especially in survival models, classification represents a main objective and it is also one of the main purposes in data mining. Among data mining methods used for classification, implementation of the decision tree due to its simplicity and understandable and accurate results, has gained much attention and popularity. In this paper, first we generate the observations by using Monte-Carlo simulation from hazard model with the three degrees of complexity in different levels of censorship 0 to 70%. Then the accuracy of classification in the Cox and the decision tree models is compared for the number of samples 1000, 5000 and 10,000 by area under the ROC curve(AUC) and the ROC-test.
机译:分类是在健康和医学等各个领域引起广泛关注的最重要问题。尤其是在生存模型中,分类是主要目标,也是数据挖掘的主要目的之一。在用于分类的数据挖掘方法中,由于决策树的简单性以及可理解和准确的结果,其实现受到了广泛的关注和欢迎。在本文中,首先,我们使用蒙特卡洛模拟方法,从审查模型为0至70%的不同级别的三个复杂度的风险模型中生成观察结果。然后比较ROC曲线(AUC)和ROC检验下按面积划分的样本数1000、5000和10,000的Cox模型和决策树模型的分类准确性。

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