English

TRBoost: A Generic Gradient Boosting Machine based on Trust-region Method

Machine Learning 2023-04-12 v4

Abstract

Gradient Boosting Machines (GBMs) have demonstrated remarkable success in solving diverse problems by utilizing Taylor expansions in functional space. However, achieving a balance between performance and generality has posed a challenge for GBMs. In particular, gradient descent-based GBMs employ the first-order Taylor expansion to ensure applicability to all loss functions, while Newton's method-based GBMs use positive Hessian information to achieve superior performance at the expense of generality. To address this issue, this study proposes a new generic Gradient Boosting Machine called Trust-region Boosting (TRBoost). In each iteration, TRBoost uses a constrained quadratic model to approximate the objective and applies the Trust-region algorithm to solve it and obtain a new learner. Unlike Newton's method-based GBMs, TRBoost does not require the Hessian to be positive definite, thereby allowing it to be applied to arbitrary loss functions while still maintaining competitive performance similar to second-order algorithms. The convergence analysis and numerical experiments conducted in this study confirm that TRBoost is as general as first-order GBMs and yields competitive results compared to second-order GBMs. Overall, TRBoost is a promising approach that balances performance and generality, making it a valuable addition to the toolkit of machine learning practitioners.

Keywords

Cite

@article{arxiv.2209.13791,
  title  = {TRBoost: A Generic Gradient Boosting Machine based on Trust-region Method},
  author = {Jiaqi Luo and Zihao Wei and Junkai Man and Shixin Xu},
  journal= {arXiv preprint arXiv:2209.13791},
  year   = {2023}
}
R2 v1 2026-06-28T02:14:57.865Z