English

Feature space reduction method for ultrahigh-dimensional, multiclass data: Random forest-based multiround screening (RFMS)

Machine Learning 2026-02-06 v1 Artificial Intelligence Computational Engineering, Finance, and Science Computation

Abstract

In recent years, numerous screening methods have been published for ultrahigh-dimensional data that contain hundreds of thousands of features; however, most of these features cannot handle data with thousands of classes. Prediction models built to authenticate users based on multichannel biometric data result in this type of problem. In this study, we present a novel method known as random forest-based multiround screening (RFMS) that can be effectively applied under such circumstances. The proposed algorithm divides the feature space into small subsets and executes a series of partial model builds. These partial models are used to implement tournament-based sorting and the selection of features based on their importance. To benchmark RFMS, a synthetic biometric feature space generator known as BiometricBlender is employed. Based on the results, the RFMS is on par with industry-standard feature screening methods while simultaneously possessing many advantages over these methods.

Keywords

Cite

@article{arxiv.2305.15793,
  title  = {Feature space reduction method for ultrahigh-dimensional, multiclass data: Random forest-based multiround screening (RFMS)},
  author = {Gergely Hanczár and Marcell Stippinger and Dávid Hanák and Marcell T. Kurbucz and Olivér M. Törteli and Ágnes Chripkó and Zoltán Somogyvári},
  journal= {arXiv preprint arXiv:2305.15793},
  year   = {2026}
}

Comments

9 pages, 2 figures, 2 tables

R2 v1 2026-06-28T10:45:37.184Z