MLLGMay 15

A Scalable Nonparametric Continuous-Time Survival Model through Numerical Quadrature

arXiv:2605.162083.0
AI Analysis

For researchers and practitioners in survival analysis, QSurv provides a flexible and efficient method for continuous-time modeling without discretization or distributional assumptions, offering better interpretability of time-varying risk patterns.

QSurv introduces a scalable deep learning framework for nonparametric continuous-time survival modeling using Gauss-Legendre numerical quadrature to approximate the cumulative hazard, achieving competitive predictive performance and improved instantaneous hazard estimation across synthetic, tabular, and medical imaging datasets.

Flexible continuous-time survival modeling is critical for capturing complex time-varying hazard dynamics in high-dimensional data; however, training such models remains challenging due to the intractable integral required for likelihood estimation. We introduce QSurv, a scalable deep learning framework that enables nonparametric continuous-time modeling without relying on time discretization or restrictive distributional assumptions. We propose a training objective based on Gauss-Legendre numerical quadrature, which approximates the cumulative hazard with high-order accuracy while facilitating efficient end-to-end training via standard backpropagation. Furthermore, to effectively capture non-stationary hazard dynamics in complex architectures, we introduce time-conditioned low-rank adaptation, a mechanism that conditions general neural backbones on time by dynamically modulating weights via low-rank updates. We provide theoretical analysis establishing approximation error bounds for cumulative-hazard evaluation. Comprehensive experiments across synthetic benchmarks, large-scale real-world tabular datasets, and high-dimensional medical imaging tasks demonstrate that QSurv achieves competitive predictive performance with advantages in instantaneous hazard function estimation, enabling more interpretable characterization of time-varying risk patterns.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes