TY - JOUR
T1 - Kernelized Stein Discrepancy Tests of Goodness-of-fit for Time-to-Event Data
AU - Fernández, Tamara
AU - Rivera, Nicolás
AU - Xu, Wenkai
AU - Gretton, Arthur
N1 - Publisher Copyright:
© 2020 by the author(s).
PY - 2020
Y1 - 2020
N2 - Survival Analysis and Reliability Theory are concerned with the analysis of time-to-event data, in which observations correspond to waiting times until an event of interest such as death from a particular disease or failure of a component in a mechanical system. This type of data is unique due to the presence of censoring, a type of missing data that occurs when we donotobserve the actual time of the event of interest but, instead, we have access to an approximation for it given by random interval in which the observation is known to be long. Most traditional methods are not designed to deal with censoring, and thus we need to adapt them to censored time-to-event data. In this pa per, we focus on non-parametric goodness-of-fit testing procedures based on combining the Stein’s method and kernelized discrepancies. While for uncensored data, there is a natural way of implementing a kernelized Stein discrepancy test, for censored data there are several options, each of them with different advantages and disadvantages. In this paper, we propose a collection of kernelized Stein discrepancy tests for time-to-event data, and we study each of them theoretically and empirically; our experimental results show that our proposed methods perform better than existing tests, including previous tests based on a kernel ized maximum mean discrepancy.
AB - Survival Analysis and Reliability Theory are concerned with the analysis of time-to-event data, in which observations correspond to waiting times until an event of interest such as death from a particular disease or failure of a component in a mechanical system. This type of data is unique due to the presence of censoring, a type of missing data that occurs when we donotobserve the actual time of the event of interest but, instead, we have access to an approximation for it given by random interval in which the observation is known to be long. Most traditional methods are not designed to deal with censoring, and thus we need to adapt them to censored time-to-event data. In this pa per, we focus on non-parametric goodness-of-fit testing procedures based on combining the Stein’s method and kernelized discrepancies. While for uncensored data, there is a natural way of implementing a kernelized Stein discrepancy test, for censored data there are several options, each of them with different advantages and disadvantages. In this paper, we propose a collection of kernelized Stein discrepancy tests for time-to-event data, and we study each of them theoretically and empirically; our experimental results show that our proposed methods perform better than existing tests, including previous tests based on a kernel ized maximum mean discrepancy.
UR - https://www.scopus.com/pages/publications/105021952891
M3 - Conference article
AN - SCOPUS:105021952891
SN - 2640-3498
VL - 119
JO - Proceedings of Machine Learning Research
JF - Proceedings of Machine Learning Research
T2 - 37th International Conference on Machine Learning, ICML 2020
Y2 - 13 July 2020 through 18 July 2020
ER -