Publication:
Trading accuracy for privacy in machine learning tasks: an empirical analysis

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2022-03-22
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IEEE
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Abstract
Different kinds of user-generated data are increasingly used to tailor and optimize, through Machine Learning, the operation of online services and infrastructures. This typically requires sharing data among different partners, often including private data of individuals or business confidential data. While this poses privacy issues, the current state-of-the-art solutions either impose strong assumptions on the usage scenario or drastically reduce the data quality. In this paper, we evaluate through a generic framework the trade-offs between the accuracy of Machine Learning tasks and the achieved privacy (measured as similarity) on the input data, discussing trends and ways forward.
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Proceeding of: IEEE Conference on Communications and Network Security (CNS 2021), 4-6 Oct. 2021, Tempe, AZ, USA (Virtual conference)
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Machine Learning, Privacy, Trade offs
Bibliographic citation
González Sánchez, Roberto; Gramaglia, Marco; Prodomo, Vittorio. Trading accuracy for privacy in machine learning tasks: an empirical analysis. In: IEEE Conference on Communications and Network Security (CNS 2021). IEEE, March 2022, 2 p.