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Personalized Federated Learning with Contextual Modulation and Meta-Learning
Halmstad University, School of Information Technology, Center for Applied Intelligent Systems Research (CAISR).ORCID iD: 0000-0003-0185-5038
Halmstad University, School of Information Technology, Center for Applied Intelligent Systems Research (CAISR).ORCID iD: 0000-0002-2859-6155
Halmstad University, School of Information Technology, Center for Applied Intelligent Systems Research (CAISR).ORCID iD: 0000-0001-5163-2997
2024 (English)In: Proceedings of the 2024 SIAM International Conference on Data Mining (SDM) / [ed] Shashi Shekhar; Vagelis Papalexakis; Jing Gao; Zhe Jiang; Matteo Riondato, Philadelphia, PA: Society for Industrial and Applied Mathematics, 2024, p. 842-850Conference paper, Published paper (Refereed)
Abstract [en]

Federated learning has emerged as a promising approach for training machine learning models on decentralized data sources while preserving data privacy. However, challenges such as communication bottlenecks, heterogeneity of client devices, and non-i.i.d. data distribution pose significant obstacles to achieving optimal model performance. We propose a novel framework that combines federated learning with meta-learning techniques to enhance both efficiency and generalization capabilities. Our approach introduces a federated modulator that learns contextual information from data batches and uses this knowledge to generate modulation parameters. These parameters dynamically adjust the activations of a base model, which operates using a MAML-based approach for model personalization. Experimental results across diverse datasets highlight the improvements in convergence speed and model performance compared to existing federated learning approaches. These findings highlight the potential of incorporating contextual information and meta-learning techniques into federated learning, paving the way for advancements in distributed machine learning paradigms. Copyright © 2024 by SIAM.

Place, publisher, year, edition, pages
Philadelphia, PA: Society for Industrial and Applied Mathematics, 2024. p. 842-850
Series
Proceedings of the ... SIAM International Conference on Data Mining, ISSN 2167-0102, E-ISSN 2167-0099
Keywords [en]
Personalized federated learning, Meta-learning, Federated learning, Context learning
National Category
Computer Sciences
Identifiers
URN: urn:nbn:se:hh:diva-53426DOI: 10.1137/1.9781611978032.96Scopus ID: 2-s2.0-85193511974ISBN: 978-1-61197-803-2 (electronic)OAI: oai:DiVA.org:hh-53426DiVA, id: diva2:1861387
Conference
SIAM International Conference on Data Mining (SDM), Houston, USA, April 18-20, 2024
Funder
Knowledge FoundationAvailable from: 2024-05-28 Created: 2024-05-28 Last updated: 2025-10-01Bibliographically approved
In thesis
1. Advancing Meta-Learning for Enhanced Generalization Across Diverse Tasks
Open this publication in new window or tab >>Advancing Meta-Learning for Enhanced Generalization Across Diverse Tasks
2025 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

Meta-learning, or learning to learn, is a rapidly evolving area in machine learning that aims to enhance the adaptability and efficiency of learning algorithms. Inspired by the human ability to learn new concepts from limited examples and quickly adapt to unforeseen situations, meta-learning leverages prior experience to prepare models for fast adaptation to new tasks. Unlike traditional machine learning systems, where models are trained for specific tasks, meta-learning frameworks enable models to acquire generalized knowledge during training and efficiently learn new tasks during inference. This ability to generalize from past experiences to new tasks makes meta-learning a key focus in advancing artificial intelligence, offering the potential to create more flexible and efficient AI systems capable of performing well with minimal data.

In this thesis, we begin by formally defining the meta-learning framework, establishing clear terminology, and synthesizing existing work in a comprehensive survey paper. Building on this foundation, we demonstrate how meta-learning can be integrated into various fields to enhance model performance and extend capabilities to few-shot learning scenarios. We show how meta-learning can significantly improve the accuracy and efficiency of transferring knowledge across domains in domain adaptation. In scenarios involving a multimodal distribution of tasks, we develop methods that efficiently learn from and adapt to a wide variety of tasks drawn from different modes within the distribution, ensuring effective adaptation across diverse domains. Our work on personalized federated learning highlights meta-learning's potential to tailor federated learning processes to individual user needs while maintaining privacy and data security. Additionally, we address the challenges of continual learning by developing models that continuously integrate new information without forgetting previously acquired knowledge. For time series data analysis, we present meta-learning strategies that automatically learn optimal augmentation techniques, enhancing model predictions and offering robust solutions for real-world applications. Lastly, our pioneering research on unsupervised meta-learning via in-context learning explores innovative approaches for constructing tasks and learning effectively from unlabeled data.

Overall, the contributions of this thesis emphasize the potential of meta-learning techniques to improve performance across diverse research areas and demonstrate how advancements in one area can benefit the field as a whole.

Place, publisher, year, edition, pages
Halmstad: Halmstad University Press, 2025. p. 46
Series
Halmstad University Dissertations ; 127
Keywords
Meta-learning, Few-shot learning, Domain adaptation, Federated learning, Continual learning, Unsupervised learning, In-context learning
National Category
Computer Sciences
Identifiers
urn:nbn:se:hh:diva-55147 (URN)978-91-89587-71-7 (ISBN)978-91-89587-70-0 (ISBN)
Public defence
2025-02-03, S1022, Kristian IV:s väg 3, 30118, Halmstad, Halmstad, 13:00 (English)
Opponent
Supervisors
Available from: 2025-01-08 Created: 2025-01-07 Last updated: 2025-10-01Bibliographically approved

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paper(777 kB)225 downloads
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supplementary_materials(635 kB)81 downloads
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Vettoruzzo, AnnaBouguelia, Mohamed-RafikRögnvaldsson, Thorsteinn

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