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    PrivExtractor: toward redressing the imbalance of understanding between virtual assistant users and vendors

    Bolton, Tom, Dargahi, Tooska ORCID logoORCID: https://orcid.org/0000-0002-0908-6483, Belguith, Sana and Maple, Carsten (2023) PrivExtractor: toward redressing the imbalance of understanding between virtual assistant users and vendors. ACM Transactions on Privacy and Security, 26 (3). 31. ISSN 2471-2566

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    Abstract

    The use of voice-controlled virtual assistants (VAs) is significant, and user numbers increase every year. Extensive use of VAs has provided the large, cash-rich technology companies who sell them with another way of consuming users' data, providing a lucrative revenue stream. Whilst these companies are legally obliged to treat users' information "fairly and responsibly,"artificial intelligence techniques used to process data have become incredibly sophisticated, leading to users' concerns that a lack of clarity is making it hard to understand the nature and scope of data collection and use.There has been little work undertaken on a self-contained user awareness tool targeting VAs. PrivExtractor, a novel web-based awareness dashboard for VA users, intends to redress this imbalance of understanding between the data "processors"and the user. It aims to achieve this using the four largest VA vendors as a case study and providing a comparison function that examines the four companies' privacy practices and their compliance with data protection law.As a result of this research, we conclude that the companies studied are largely compliant with the law, as expected. However, the user remains disadvantaged due to the ineffectiveness of current data regulation that does not oblige the companies to fully and transparently disclose how and when they use, share, or profit from the data. Furthermore, the software tool developed during the research is, we believe, the first that is capable of a comparative analysis of VA privacy with a visual demonstration to increase ease of understanding for the user.

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