Decision Tree-Based Federated Learning: A Survey

Zijun Wang, Keke Gai
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Abstract

Federated learning (FL) has garnered significant attention as a novel machine learning technique that enables collaborative training among multiple parties without exposing raw local data. In comparison to traditional neural networks or linear models, decision tree models offer higher simplicity and interpretability. The integration of FL technology with decision tree models holds immense potential for performance enhancement and privacy improvement. One current challenge is to identify methods for training and prediction of decision tree models in the FL environment. This survey addresses this issue and examines recent efforts to integrate federated learning and decision tree technologies. We review research outcomes achieved in federated decision trees and emphasize that data security and communication efficiency are crucial focal points for FL. The survey discusses key findings related to data privacy and security issues, as well as communication efficiency problems in federated decision tree models. The primary research outcomes of this paper aim to provide theoretical support for the engineering of federated learning with decision trees as the underlying training model.
基于决策树的联合学习:调查
联邦学习(FL)作为一种新颖的机器学习技术备受关注,它可以在不暴露原始本地数据的情况下实现多方协作训练。与传统的神经网络或线性模型相比,决策树模型具有更高的简单性和可解释性。将 FL 技术与决策树模型相结合,在提高性能和改善隐私方面具有巨大的潜力。当前的一个挑战是如何确定在 FL 环境中训练和预测决策树模型的方法。本调查报告探讨了这一问题,并研究了最近在整合联合学习和决策树技术方面所做的努力。我们回顾了在联合决策树方面取得的研究成果,并强调数据安全和通信效率是 FL 的关键焦点。调查讨论了与联合决策树模型中的数据隐私和安全问题以及通信效率问题有关的主要发现。本文的主要研究成果旨在为以决策树为基础训练模型的联合学习工程提供理论支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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