- 演讲人: 曾子悦
- 时间:2024年10日22日14:00
- 地点:浙江大学紫金港校区行政楼1417报告厅
报告文章:Deep Learning for the Partially Linear Cox Model
(Qixian Zhong, Jonas Mueller, Jane-Ling Wang)
摘要:While deep learning approaches to survival data have demonstrated empirical success in applications, most of these methods are difficult to interpret and mathematical understanding of them is lacking. This paper studies the partially linear Cox model, where the nonlinear component of the model is implemented using a deep neural network. The proposed approach is flexible and able to circumvent the curse of dimensionality, yet it facilitates interpretability of the effects of treatment covariates on survival. We establish asymptotic theories of maximum partial likelihood estimators and show that our nonparametric deep neural network estimator achieves the minimax optimal rate of convergence (up to a polylogarithmic factor). Moreover, we prove that the corresponding finite-dimensional estimator for treatment covariate effects is sqrt(n)-consistent, asymptotically normal and attains semiparametric efficiency. Extensive simulation studies and analyses of two real survival data sets show the proposed estimator produces confidence intervals with superior coverage as well as survival time predictions with superior concordance to actual survival times.