10
0

BranchNet: A Neuro-Symbolic Learning Framework for Structured Multi-Class Classification

Dalia Rodríguez-Salas
Christian Riess
Main:16 Pages
4 Figures
Bibliography:2 Pages
4 Tables
Abstract

We introduce BranchNet, a neuro-symbolic learning framework that transforms decision tree ensembles into sparse, partially connected neural networks. Each branch, defined as a decision path from root to a parent of leaves, is mapped to a hidden neuron, preserving symbolic structure while enabling gradient-based optimization. The resulting models are compact, interpretable, and require no manual architecture tuning. Evaluated on a suite of structured multi-class classification benchmarks, BranchNet consistently outperforms XGBoost in accuracy, with statistically significant gains. We detail the architecture, training procedure, and sparsity dynamics, and discuss the model's strengths in symbolic interpretability as well as its current limitations, particularly on binary tasks where further adaptive calibration may be beneficial.

View on arXiv
@article{rodríguez-salas2025_2507.01781,
  title={ BranchNet: A Neuro-Symbolic Learning Framework for Structured Multi-Class Classification },
  author={ Dalia Rodríguez-Salas and Christian Riess },
  journal={arXiv preprint arXiv:2507.01781},
  year={ 2025 }
}
Comments on this paper