Multi-Modal One-Shot Federated Ensemble Learning for Medical Data with Vision Large Language Model
Naibo Wang, Yuchen Deng, Shichen Fan, Jianwei Yin, See-Kiong Ng

TL;DR
This paper presents FedMME, a novel one-shot federated ensemble learning framework that leverages multi-modal data and vision large language models to enhance medical diagnosis accuracy while reducing communication overhead.
Contribution
FedMME introduces a multi-modal, one-shot federated ensemble learning approach utilizing vision large language models for improved medical image analysis.
Findings
Outperforms existing one-shot federated learning methods by over 17.5% in accuracy.
Demonstrates superior performance across four diverse datasets.
Effectively integrates visual and textual features for better diagnostics.
Abstract
Federated learning (FL) has attracted considerable interest in the medical domain due to its capacity to facilitate collaborative model training while maintaining data privacy. However, conventional FL methods typically necessitate multiple communication rounds, leading to significant communication overhead and delays, especially in environments with limited bandwidth. One-shot federated learning addresses these issues by conducting model training and aggregation in a single communication round, thereby reducing communication costs while preserving privacy. Among these, one-shot federated ensemble learning combines independently trained client models using ensemble techniques such as voting, further boosting performance in non-IID data scenarios. On the other hand, existing machine learning methods in healthcare predominantly use unimodal data (e.g., medical images or textual reports),…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Medical Imaging and Analysis
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · Attention Is All You Need · Layer Normalization · Dense Connections · Attention Dropout · Softmax · Linear Warmup With Linear Decay · WordPiece · Linear Layer · Adam
