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Evaluating Federated Learning for human activity recognition

Abstract : Pervasive computing promotes the integration of connected electronic devices in our living environments in order to deliver advanced services. Interest in machine learning approaches for engineering pervasive applications has increased rapidly. Recently federated learning (FL) has been proposed. It has immediately attracted attention as a new machine learning paradigm promoting the use of edge servers. This new paradigm seems to fit the pervasive environment well. However, federated learning has been applied so far to very specific applications. It still remains largely conceptual and needs to be clarified and tested. Here, we present experiments performed in the domain of Human Activity Recognition (HAR) on smartphones which exhibit challenges related to model convergence.
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https://hal.archives-ouvertes.fr/hal-03102880
Contributor : François Portet Connect in order to contact the contributor
Submitted on : Thursday, January 7, 2021 - 6:09:46 PM
Last modification on : Friday, August 5, 2022 - 10:31:49 AM
Long-term archiving on: : Thursday, April 8, 2021 - 7:51:35 PM

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  • HAL Id : hal-03102880, version 1

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Sannara Ek, François Portet, Philippe Lalanda, German Eduardo Vega Baez. Evaluating Federated Learning for human activity recognition. Workshop AI for Internet of Things, in conjunction with IJCAI-PRICAI 2020, Jan 2021, Yokohama, Japan. ⟨hal-03102880⟩

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