Abstracting syntactic privacy notions via privacy games

It is well understood that the huge volumes of data captured in recent years have the potential to underpin significant research developments in many fields. But, to realise these benefits, all relevant parties must be comfortable with how this data is shared. At the heart of this is the notion of p...

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Hauptverfasser: Ankele, R, Simpson, A
Format: Conference item
Sprache:English
Veröffentlicht: IEEE 2020
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author Ankele, R
Simpson, A
author_facet Ankele, R
Simpson, A
author_sort Ankele, R
collection OXFORD
description It is well understood that the huge volumes of data captured in recent years have the potential to underpin significant research developments in many fields. But, to realise these benefits, all relevant parties must be comfortable with how this data is shared. At the heart of this is the notion of privacy — which is recognised as being somewhat difficult to define. Previous authors have shown how privacy notions such as anonymity, unlinkability and pseudonymity might be combined into a single formal framework. We use and extend this work by defining privacy games for individual and group privacy within distributed environments. For each privacy notion, we formulate a game that an adversary has to win in order to break the notion. Via these games, we aim to clarify understanding of, and relationships between, different privacy notions; we also aim to give an unambiguous understanding of adversarial actions. Additionally, we extend previous work via the notion of unobservability.
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spelling oxford-uuid:ac4109e2-ae5f-48c5-bccc-781a9ddf0b7a2022-03-27T03:27:40ZAbstracting syntactic privacy notions via privacy gamesConference itemhttp://purl.org/coar/resource_type/c_5794uuid:ac4109e2-ae5f-48c5-bccc-781a9ddf0b7aEnglishSymplectic Elements at OxfordIEEE2020Ankele, RSimpson, AIt is well understood that the huge volumes of data captured in recent years have the potential to underpin significant research developments in many fields. But, to realise these benefits, all relevant parties must be comfortable with how this data is shared. At the heart of this is the notion of privacy — which is recognised as being somewhat difficult to define. Previous authors have shown how privacy notions such as anonymity, unlinkability and pseudonymity might be combined into a single formal framework. We use and extend this work by defining privacy games for individual and group privacy within distributed environments. For each privacy notion, we formulate a game that an adversary has to win in order to break the notion. Via these games, we aim to clarify understanding of, and relationships between, different privacy notions; we also aim to give an unambiguous understanding of adversarial actions. Additionally, we extend previous work via the notion of unobservability.
spellingShingle Ankele, R
Simpson, A
Abstracting syntactic privacy notions via privacy games
title Abstracting syntactic privacy notions via privacy games
title_full Abstracting syntactic privacy notions via privacy games
title_fullStr Abstracting syntactic privacy notions via privacy games
title_full_unstemmed Abstracting syntactic privacy notions via privacy games
title_short Abstracting syntactic privacy notions via privacy games
title_sort abstracting syntactic privacy notions via privacy games
work_keys_str_mv AT ankeler abstractingsyntacticprivacynotionsviaprivacygames
AT simpsona abstractingsyntacticprivacynotionsviaprivacygames