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Interpretable Survival Gradient Boosting Models with Bagged Trees Base Learners

机译:带袋装树的可解释生存梯度提升模型基础学习者

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In this paper we present a novel survival analysis modeling approach based on gradient boosting using bagged trees as base learners. The resulting models consist of additive components of single variable models and their pairwise interactions, which makes them visually interpretable. We show that our method produces competitive results often having the predictive power higher than full-complexity models. This is achieved while maintaining full interpretability of the model, which makes our method useful in medical applications.
机译:在本文中,我们提出了一种新颖的生存分析建模方法,该方法基于以袋装树为基础学习者的梯度提升。生成的模型由单变量模型的加性成分及其成对相互作用组成,这使它们在视觉上可以解释。我们表明,我们的方法产生的竞争结果通常具有比完全复杂度模型更高的预测能力。这是在保持模型的完全可解释性的同时实现的,这使我们的方法在医疗应用中很有用。

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