A collaborative ensemble construction method for federated random forest
Penjan Antonio Eng Lim, Cheong Hee Park

TL;DR
This paper introduces a novel federated random forest method that collaboratively constructs an ensemble across clients, improving performance on non-IID data while preserving data privacy.
Contribution
It proposes a new ensemble construction approach for federated random forests that grows trees collectively across clients and maintains privacy by limiting leaf node information.
Findings
Enhanced accuracy on non-IID data
Preserved client data privacy
Collaborative tree growth improves ensemble performance
Abstract
Random forests are considered a cornerstone in machine learning for their robustness and versatility. Despite these strengths, their conventional centralized training is ill-suited for the modern landscape of data that is often distributed, sensitive, and subject to privacy concerns. Federated learning (FL) provides a compelling solution to this problem, enabling models to be trained across a group of clients while maintaining the privacy of each client's data. However, adapting tree-based methods like random forests to federated settings introduces significant challenges, particularly when it comes to non-identically distributed (non-IID) data across clients, which is a common scenario in real-world applications. This paper presents a federated random forest approach that employs a novel ensemble construction method aimed at improving performance under non-IID data. Instead of growing…
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Taxonomy
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