Today, Artificial Intelligence is still facing a major challenge which is the fact of handling and strengthening data privacy. This challenge rises from the collected data which are associated with the fast development of mobile technologies, the huge capacities of high performance computing, and the large-scale storage in the cloud. In this paper, we focus on a possible solution to this challenge which is the use and application of federated learning. Specifically, beyond the federated learning based approaches proposed in different application domains, we mainly focus and discuss a federated learning approach for privacy-aware analysis of semantically enriched mobility data. We introduce the main motivation and opportunities of applying federated learning in mobility data, and highlight the main concepts and basics of our approach by describing our objectives and our approaches' requirements. We, also, describe our workplan that will permit achieving our predefined objectives via the setup of several research questions.

Towards a federated learning approach for privacy-aware analysis of semantically enriched mobility data

Renso c;
2021

Abstract

Today, Artificial Intelligence is still facing a major challenge which is the fact of handling and strengthening data privacy. This challenge rises from the collected data which are associated with the fast development of mobile technologies, the huge capacities of high performance computing, and the large-scale storage in the cloud. In this paper, we focus on a possible solution to this challenge which is the use and application of federated learning. Specifically, beyond the federated learning based approaches proposed in different application domains, we mainly focus and discuss a federated learning approach for privacy-aware analysis of semantically enriched mobility data. We introduce the main motivation and opportunities of applying federated learning in mobility data, and highlight the main concepts and basics of our approach by describing our objectives and our approaches' requirements. We, also, describe our workplan that will permit achieving our predefined objectives via the setup of several research questions.
2021
Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI
978-1-4503-8384-4
Federated Learning
Privacy
Trajectories
Mobility data
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Descrizione: Towards a Federated Learning Approach for Privacy-aware Analysis of Semantically Enriched Mobility Data
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/443668
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