|国家预印本平台
首页|A Sequential Quadratic Hamiltonian-Based Estimation Method for Box-Cox Transformation Cure Model

A Sequential Quadratic Hamiltonian-Based Estimation Method for Box-Cox Transformation Cure Model

A Sequential Quadratic Hamiltonian-Based Estimation Method for Box-Cox Transformation Cure Model

来源:Arxiv_logoArxiv
英文摘要

We propose an enhanced estimation method for the Box-Cox transformation (BCT) cure rate model parameters by introducing a generic maximum likelihood estimation algorithm, the sequential quadratic Hamiltonian (SQH) scheme, which is based on a gradient-free approach. We apply the SQH algorithm to the BCT cure model and, through an extensive simulation study, compare its model fitting results with those obtained using the recently developed non-linear conjugate gradient (NCG) algorithm. Since the NCG method has already been shown to outperform the well-known expectation maximization algorithm, our focus is on demonstrating the superiority of the SQH algorithm over NCG. First, we show that the SQH algorithm produces estimates with smaller bias and root mean square error for all BCT cure model parameters, resulting in more accurate and precise cure rate estimates. We then demonstrate that, being gradient-free, the SQH algorithm requires less CPU time to generate estimates compared to the NCG algorithm, which only computes the gradient and not the Hessian. These advantages make the SQH algorithm the preferred estimation method over the NCG method for the BCT cure model. Finally, we apply the SQH algorithm to analyze a well-known melanoma dataset and present the results.

Phuong Bui、Varun Jadhav、Suvra Pal、Souvik Roy

医学研究方法生物科学研究方法、生物科学研究技术

Phuong Bui,Varun Jadhav,Suvra Pal,Souvik Roy.A Sequential Quadratic Hamiltonian-Based Estimation Method for Box-Cox Transformation Cure Model[EB/OL].(2025-05-02)[2025-06-25].https://arxiv.org/abs/2505.01097.点此复制

评论