학술논문

Advancing Medical Recommendations With Federated Learning on Decentralized Data: A Roadmap for Implementation
Document Type
Periodical
Source
IEEE Transactions on Consumer Electronics IEEE Trans. Consumer Electron. Consumer Electronics, IEEE Transactions on. 70(1):2666-2674 Feb, 2024
Subject
Power, Energy and Industry Applications
Components, Circuits, Devices and Systems
Fields, Waves and Electromagnetics
Data models
Medical diagnostic imaging
Medical services
Federated learning
Distributed databases
Data privacy
Training
personalized medical recommendations
decentralized data
model architecture
and sensitivity analysis
Language
ISSN
0098-3063
1558-4127
Abstract
This proposal presents a road-map for implementing federated learning (FL) for personalized medical recommendations on decentralized data. FL is a privacy-preserving technique allowing multiple parties to train machine learning models collaboratively without sharing their data. Our proposed framework incorporates differential privacy techniques to protect patient privacy. We discuss several evaluation metrics, including KL divergence, fairness, confidence intervals, top-N hit rate, sensitivity analysis, and novelty to evaluate the performance of the federated learning system. These metrics collectively serve as a robust toolbox for assessing Space needed the performance of the federated learning system. The proposed framework and evaluation metrics can provide valuable insights into the system’s effectiveness and guide the selection of optimal hyperparameters and model architectures.