Abstract
Componentwise boosting (CWB), also known as model-based boosting, is a variant of gradient boosting that builds on additive models as base learners to ensure interpretability. CWB is thus often used in research areas where models are employed as tools to explain relationships in data. One downside of CWB is its computational complexity in terms of memory and runtime. In this article, we propose two techniques to overcome these issues without losing the properties of CWB: feature discretization of numerical features and incorporating Nesterov momentum into functional gradient descent. As the latter can be prone to early overfitting, we also propose a hybrid approach that prevents a possibly diverging gradient descent routine while ensuring faster convergence. Our adaptions improve vanilla CWB by reducing memory consumption and speeding up the computation time per iteration (through feature discretization) while also enabling CWB learn faster and hence to require fewer iterations in total using momentum. We perform extensive benchmarks on multiple simulated and real-world datasets to demonstrate the improvements in runtime and memory consumption while maintaining state-of-the-art estimation and prediction performance.
Disclosure Statement
The authors report there are no competing interests to declare.
Supplementary Material
Appendix:Descriptions of possible categorical feature representations with a short comparison w.r.t. runtime and memory consumption as well as class selection properties in the presence of noise. The Appendix further contains empirical validation of the computational complexity estimates as given in Section 2.4 and 3.1.3. The appendix also contains a figure for the full benchmark.
Source code of compboost:github.com/schalkdaniel/compboost (Commit tag of the snapshot used in this article: c68e8fb32aea862750991260d243cdca1d3ebd0e)
Benchmark source code: https://github.com/schalkdaniel/cacb-paper-bmr.
Benchmark Docker:Docker image with pre-installed packages to run the benchmark and access results for manual inspection: hub.docker.com/repository/docker/schalkdaniel/cacb-paper-bmr.