Efficient Decision Trees for Tensor Regressions
Machine Learning
2025-07-10 v2 Methodology
Machine Learning
Abstract
We proposed the tensor-input tree (TT) method for scalar-on-tensor and tensor-on-tensor regression problems. We first address scalar-on-tensor problem by proposing scalar-output regression tree models whose input variable are tensors (i.e., multi-way arrays). We devised and implemented fast randomized and deterministic algorithms for efficient fitting of scalar-on-tensor trees, making TT competitive against tensor-input GP models. Based on scalar-on-tensor tree models, we extend our method to tensor-on-tensor problems using additive tree ensemble approaches. Theoretical justification and extensive experiments on real and synthetic datasets are provided to illustrate the performance of TT.
Cite
@article{arxiv.2408.01926,
title = {Efficient Decision Trees for Tensor Regressions},
author = {Hengrui Luo and Akira Horiguchi and Li Ma},
journal= {arXiv preprint arXiv:2408.01926},
year = {2025}
}
Comments
52 pages, 11 Figures