Gradient boosting with vector-valued leafs
摘要
Gradient boosting in the form of decision tree ensembles has successfully been applied to a variety of problems using simple objective functions based on log-likelihoods of a single variable. The concept extends naturally to objective functions operating on vectors - for example, multinomial logistic log-likelihood for multi-class classification, where observations have a score for each class - but popular frameworks approach these functions by either updating one value of the input vectors at a time, or by using a diagonal upper bound on the second derivative. This work extends the usual gradient boosting framework to functions of vector inputs and sketches a simple algorithm that can be used efficiently with histogram-based decision trees.
引用
@article{arxiv.2606.29326,
title = {Gradient boosting with vector-valued leafs},
author = {David Cortes},
journal= {arXiv preprint arXiv:2606.29326},
year = {2026}
}