Deep Clustering Survival Machines with Interpretable Expert Distributions.

Bojian Hou, Hongming Li, Zhicheng Jiao, Zhen Zhou, Hao Zheng, Yong Fan
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引用次数: 0

Abstract

We develop deep clustering survival machines to simultaneously predict survival information and characterize data heterogeneity that is not typically modeled by conventional survival analysis methods. By modeling timing information of survival data generatively with a mixture of parametric distributions, referred to as expert distributions, our method learns weights of the expert distributions for individual instances based on their features discriminatively such that each instance's survival information can be characterized by a weighted combination of the learned expert distributions. Extensive experiments on both real and synthetic datasets have demonstrated that our method is capable of obtaining promising clustering results and competitive time-to-event predicting performance.

具有可解释专家分布的深度聚类生存机器。
我们开发了深度聚类生存机,以同时预测生存信息并表征传统生存分析方法通常无法建模的数据异质性。通过用被称为专家分布的参数分布的混合来生成生存数据的时序信息,我们的方法基于个体实例的特征来有区别地学习个体实例的专家分布的权重,使得每个实例的生存信息可以由所学习的专家分布的加权组合来表征。在真实数据集和合成数据集上进行的大量实验表明,我们的方法能够获得有希望的聚类结果和有竞争力的事件时间预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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