FedMultimodal: A Benchmark For Multimodal Federated Learning
Tiantian Feng, Digbalay Bose, Tuo Zhang, Rajat Hebbar and, Anil Ramakrishna, Rahul Gupta, Mi Zhang, Salman Avestimehr and, Shrikanth Narayanan

TL;DR
FedMultimodal introduces the first comprehensive benchmark for multimodal federated learning, enabling systematic evaluation of algorithms across diverse multimodal applications and robustness challenges.
Contribution
It provides a standardized, end-to-end benchmarking framework for multimodal federated learning, covering multiple datasets, modalities, and robustness assessments.
Findings
Benchmark facilitates evaluation of FL robustness against data corruptions.
Supports diverse multimodal applications with standardized protocols.
Aims to accelerate research in multimodal FL algorithms and robustness.
Abstract
Over the past few years, Federated Learning (FL) has become an emerging machine learning technique to tackle data privacy challenges through collaborative training. In the Federated Learning algorithm, the clients submit a locally trained model, and the server aggregates these parameters until convergence. Despite significant efforts that have been made to FL in fields like computer vision, audio, and natural language processing, the FL applications utilizing multimodal data streams remain largely unexplored. It is known that multimodal learning has broad real-world applications in emotion recognition, healthcare, multimedia, and social media, while user privacy persists as a critical concern. Specifically, there are no existing FL benchmarks targeting multimodal applications or related tasks. In order to facilitate the research in multimodal FL, we introduce FedMultimodal, the first FL…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
