Visualising Personal Data Flows: Insights from a Case Study of Booking.com
- URL: http://arxiv.org/abs/2304.09603v5
- Date: Fri, 20 Sep 2024 08:06:34 GMT
- Title: Visualising Personal Data Flows: Insights from a Case Study of Booking.com
- Authors: Haiyue Yuan, Matthew Boakes, Xiao Ma, Dongmei Cao, Shujun Li,
- Abstract summary: This paper reports our work on taking Booking.com as a case study to visualise personal data flows extracted from their privacy policy.
By showcasing how the company shares its consumers' personal data, we raise questions and extend discussions on the challenges and limitations of using privacy policies to inform online users about the true scale and the landscape of personal data flows.
- Score: 8.485751288361616
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Commercial organisations are holding and processing an ever-increasing amount of personal data. Policies and laws are continually changing to require these companies to be more transparent regarding the collection, storage, processing and sharing of this data. This paper reports our work of taking Booking.com as a case study to visualise personal data flows extracted from their privacy policy. By showcasing how the company shares its consumers' personal data, we raise questions and extend discussions on the challenges and limitations of using privacy policies to inform online users about the true scale and the landscape of personal data flows. This case study can inform us about future research on more data flow-oriented privacy policy analysis and on the construction of a more comprehensive ontology on personal data flows in complicated business ecosystems.
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