1. Federated Bayesian Network Ensembles
- Author
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van Daalen, Florian, Ippel, Lianne, Dekker, Andre, Bermejo, Inigo, Quwaider, M, Awaysheh, F, Jararweh, Y, van Daalen, Florian, Ippel, Lianne, Dekker, Andre, Bermejo, Inigo, Quwaider, M, Awaysheh, F, and Jararweh, Y
- Abstract
Federated learning allows us to run machine learning algorithms on decentralized data when data sharing is not permitted due to privacy concerns. Ensemble-based learning works by training multiple (weak) classifiers whose output is aggregated. Federated ensembles are ensembles applied to a federated setting, where each classifier in the ensemble is trained on one data location. In this article, we explore the use of federated Bayesian network ensembles (FBNE) in a range of experiments and compare their performance with both locally trained models and models trained with VertiBayes, a federated learning algorithm to train Bayesian networks from decentralized data. Our results show that FBNE outperform local models and provides, among other advantages, a significant increase in training speed compared with VertiBayes while maintaining a similar performance in most settings. We show that FBNE are a potentially useful tool within the federated learning toolbox, especially when local populations are heavily biased, or there is a strong imbalance in population size across parties. We discuss the advantages and disadvantages of this approach in terms of time complexity, model accuracy, privacy protection, and model interpretability.
- Published
- 2023