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Guide to Differential Privacy Modifications
Details
Shortly after it was rst introduced in 2006, dierential privacy became the agship data privacy denition. Since then, numerous variants and extensions were proposed to adapt it to dierent scenarios and attacker models. In this work, we propose a systematic taxonomy of these variants and extensions. We list all data privacy denitions based on dierential privacy, and partition them into seven categories, depending on which aspect of the original denition is modied.
These categories act like dimensions: Variants from the same category cannot be combined, but variants from dierent categories can be combined to form new denitions. We also establish a partial ordering of relative strength between these notions by summarizing existing results. Furthermore, we list which of these denitions satisfy some desirable properties, like composition, post-processing, and convexity by either providing a novel proof or collectingexisting ones.
Offers a systematic approach to differential privacy Addresses quantification and variation of privacy loss Lists and categorises privacy definitions
Klappentext
Shortly after it was rst introduced in 2006, di erential privacy became the agship data privacy de nition. Since then, numerous variants and extensions were proposed to adapt it to di erent scenarios and attacker models. In this work, we propose a systematic taxonomy of these variants and extensions. We list all data privacy de nitions based on di erential privacy, and partition them into seven categories, depending on which aspect of the original de nition is modi ed. These categories act like dimensions: Variants from the same category cannot be combined, but variants from di erent categories can be combined to form new de nitions. We also establish a partial ordering of relative strength between these notions by summarizing existing results. Furthermore, we list which of these de nitions satisfy some desirable properties, like composition, post-processing, and convexity by either providing a novel proof or collecting existing ones.
Inhalt
- Introduction.- 2. Dierential Privacy.- 3. Quantication of privacy loss.- 4. Neighborhood denition (N).- 5. Variation of privacy loss (V).- 6. Background knowledge (B).- 7. Change in formalism (F).- 8. Relativization of the knowledge gain (R).- 9. Computational power (C).- 10. Summarizing table.- 11. Scope and related work.- 12. Conclusion.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783030963972
- Genre Information Technology
- Auflage 1st edition 2022
- Lesemotiv Verstehen
- Anzahl Seiten 100
- Größe H235mm x B155mm x T6mm
- Jahr 2022
- EAN 9783030963972
- Format Kartonierter Einband
- ISBN 3030963977
- Veröffentlichung 10.04.2022
- Titel Guide to Differential Privacy Modifications
- Autor Damien Desfontaines , Balázs Pejó
- Untertitel A Taxonomy of Variants and Extensions
- Gewicht 166g
- Herausgeber Springer International Publishing
- Sprache Englisch