English

Enhancing Time Series Classification with Diversity-Driven Neural Network Ensembles

Machine Learning 2026-02-10 v1

Abstract

Ensemble methods have played a crucial role in achieving state-of-the-art (SOTA) performance across various machine learning tasks by leveraging the diversity of features learned by individual models. In Time Series Classification (TSC), ensembles have proven highly effective whether based on neural networks (NNs) or traditional methods like HIVE-COTE. However most existing NN-based ensemble methods for TSC train multiple models with identical architectures and configurations. These ensembles aggregate predictions without explicitly promoting diversity which often leads to redundant feature representations and limits the benefits of ensembling. In this work, we introduce a diversity-driven ensemble learning framework that explicitly encourages feature diversity among neural network ensemble members. Our approach employs a decorrelated learning strategy using a feature orthogonality loss applied directly to the learned feature representations. This ensures that each model in the ensemble captures complementary rather than redundant information. We evaluate our framework on 128 datasets from the UCR archive and show that it achieves SOTA performance with fewer models. This makes our method both efficient and scalable compared to conventional NN-based ensemble approaches.

Keywords

Cite

@article{arxiv.2602.07579,
  title  = {Enhancing Time Series Classification with Diversity-Driven Neural Network Ensembles},
  author = {Javidan Abdullayev and Maxime Devanne and Cyril Meyer and Ali Ismail-Fawaz and Jonathan Weber and Germain Forestier},
  journal= {arXiv preprint arXiv:2602.07579},
  year   = {2026}
}

Comments

Published in IEEE IJCNN 2025 proceedings. 10 pages, 8 figures

R2 v1 2026-07-01T10:26:00.409Z