English

A Framework for Verifiable and Auditable Federated Anomaly Detection

Machine Learning 2022-08-09 v1 Cryptography and Security

Abstract

Federated Leaning is an emerging approach to manage cooperation between a group of agents for the solution of Machine Learning tasks, with the goal of improving each agent's performance without disclosing any data. In this paper we present a novel algorithmic architecture that tackle this problem in the particular case of Anomaly Detection (or classification or rare events), a setting where typical applications often comprise data with sensible information, but where the scarcity of anomalous examples encourages collaboration. We show how Random Forests can be used as a tool for the development of accurate classifiers with an effective insight-sharing mechanism that does not break the data integrity. Moreover, we explain how the new architecture can be readily integrated in a blockchain infrastructure to ensure the verifiable and auditable execution of the algorithm. Furthermore, we discuss how this work may set the basis for a more general approach for the design of federated ensemble-learning methods beyond the specific task and architecture discussed in this paper.

Keywords

Cite

@article{arxiv.2203.07802,
  title  = {A Framework for Verifiable and Auditable Federated Anomaly Detection},
  author = {Gabriele Santin and Inna Skarbovsky and Fabiana Fournier and Bruno Lepri},
  journal= {arXiv preprint arXiv:2203.07802},
  year   = {2022}
}
R2 v1 2026-06-24T10:13:47.680Z