English

Transfer learning for nonparametric Bayesian networks

Machine Learning 2026-04-06 v2 Artificial Intelligence

Abstract

This paper introduces two transfer learning methodologies for estimating nonparametric Bayesian networks under scarce data. We propose two algorithms, a constraint-based structure learning method, called PC-stable-transfer learning (PCS-TL), and a score-based method, called hill climbing transfer learning (HC-TL). We also define particular metrics to tackle the negative transfer problem in each of them, a situation in which transfer learning has a negative impact on the model's performance. Then, for the parameters, we propose a log-linear pooling approach. For the evaluation, we learn kernel density estimation Bayesian networks, a type of nonparametric Bayesian network, and compare their transfer learning performance with the models alone. To do so, we sample data from small, medium and large-sized synthetic networks and datasets from the UCI Machine Learning repository. Then, we add noise and modifications to these datasets to test their ability to avoid negative transfer. To conclude, we perform a Friedman test with a Bergmann-Hommel post-hoc analysis to show statistical proof of the enhanced experimental behavior of our methods. Thus, PCS-TL and HC-TL demonstrate to be reliable algorithms for improving the learning performance of a nonparametric Bayesian network with scarce data, which in real industrial environments implies a reduction in the required time to deploy the network.

Keywords

Cite

@article{arxiv.2604.01021,
  title  = {Transfer learning for nonparametric Bayesian networks},
  author = {Rafael Sojo and Pedro Larrañaga and Concha Bielza},
  journal= {arXiv preprint arXiv:2604.01021},
  year   = {2026}
}

Comments

An earlier version was previously posted on SSRN. This version includes improvements in experiments and evaluation metrics following reviewer comments. Revision submitted to Knowledge-Based Systems

R2 v1 2026-07-01T11:48:27.600Z