Federated Markov Logic Network for indoor activity recognition in Internet of Things

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摘要

Indoor activity recognition is essential in numerous Internet of Things (IoT) applications. As one of the widely used methods in this domain, Markov Logic Network (MLN) can simultaneously use activity knowledge and data by unifying probability and logic. The “cloud computing” model has recently been adopted to concentrate the activity data and activity knowledge in a central node for processing in indoor activity recognition by using MLN, which may lead to the data leakage of the clients. Therefore, to further alleviate client data privacy issues when building an indoor activity recognition model by training MLN, this paper proposes a Federated Markov Logic Network (FMLN) framework for indoor activity recognition. We designed different scenarios to investigate the FMLN framework, including statistical heterogeneity, the number ofvarious clients, and various network environments. The experimental results show that the FMLN framework effectively detects indoor activity.

论文关键词:Federated learning,Markov Logic Network,Indoor activity recognition,Internet of Things

论文评审过程:Received 6 February 2022, Revised 20 July 2022, Accepted 22 July 2022, Available online 28 July 2022, Version of Record 9 August 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2022.109553