Learning Privacy Habits of PDS Owners. Singh, B. C., Carminati, B., & Ferrari, E. In Lee, K. & Liu, L., editors, 37th IEEE International Conference on Distributed Computing Systems, ICDCS 2017, Atlanta, GA, USA, June 5-8, 2017, pages 151–161, 2017. IEEE Computer Society.
Learning Privacy Habits of PDS Owners [link]Paper  doi  abstract   bibtex   
The concept of Personal Data Storage (PDS) has recently emerged as an alternative and innovative way of managing personal data w.r.t. the service-centric one commonly used today. The PDS offers a unique logical repository, allowing individuals to collect, store, and give access to their data to third parties. The research on PDS has so far mainly focused on the enforcement mechanisms, that is, on how user privacy preferences can be enforced. In contrast, the fundamental issue of preference specification has been so far not deeply investigated. In this paper, we do a step in this direction by proposing different learning algorithms that allow a fine-grained learning of the privacy aptitudes of PDS owners. The learned models are then used to answer third party access requests. The extensive experiments we have performed show the effectiveness of the proposed approach.
@inproceedings{DBLP:conf/icdcs/SinghCF17,
title = {Learning Privacy Habits of PDS Owners},
author = {Bikash Chandra Singh and Barbara Carminati and Elena Ferrari},
editor = {Kisung Lee and Ling Liu},
url = {https://doi.org/10.1109/ICDCS.2017.65},
doi = {10.1109/ICDCS.2017.65},
year  = {2017},
date = {2017-01-01},
booktitle = {37th IEEE International Conference on Distributed Computing Systems, 
 ICDCS 2017, Atlanta, GA, USA, June 5-8, 2017},
pages = {151--161},
publisher = {IEEE Computer Society},
abstract = {The concept of Personal Data Storage (PDS) has recently emerged as an alternative and innovative way of managing personal data w.r.t. the service-centric one commonly used today. The PDS offers a unique logical repository, allowing individuals to collect, store, and give access to their data to third parties. The research on PDS has so far mainly focused on the enforcement mechanisms, that is, on how user privacy preferences can be enforced. In contrast, the fundamental issue of preference specification has been so far not deeply investigated. In this paper, we do a step in this direction by proposing different learning algorithms that allow a fine-grained learning of the privacy aptitudes of PDS owners. The learned models are then used to answer third party access requests. The extensive experiments we have performed show the effectiveness of the proposed approach.},
keywords = {Data privacy; Privacy; Training; Computer architecture; Tools; Correlation; Proposals},
pubstate = {published},
tppubtype = {inproceedings}
}

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