Contextual Linear Types for Differential Privacy

Author:

Toro Matías1ORCID,Darais David2ORCID,Abuah Chike3ORCID,Near Joseph P.4ORCID,Árquez Damián5ORCID,Olmedo Federico5ORCID,Tanter Éric5ORCID

Affiliation:

1. Computer Science Department (DCC), University of Chile, Santiago, Chile

2. Galois, Inc., Portland, USA

3. Amazon, USA

4. Computer Science Department, University of Vermont, Burlington, USA

5. Computer Science Department (DCC), University of Chile & IMFD, Santiago, Chile

Abstract

Language support for differentially private programming is both crucial and delicate. While elaborate program logics can be very expressive, type-system-based approaches using linear types tend to be more lightweight and amenable to automatic checking and inference, and in particular in the presence of higher-order programming. Since the seminal design of Fuzz , which is restricted to ϵ-differential privacy in its original design, significant progress has been made to support more advanced variants of differential privacy, like (ϵ, δ )-differential privacy. However, supporting these advanced privacy variants while also supporting higher-order programming in full has proven to be challenging. We present Jazz , a language and type system that uses linear types and latent contextual effects to support both advanced variants of differential privacy and higher-order programming. Latent contextual effects allow delaying the payment of effects for connectives such as products, sums, and functions, yielding advantages in terms of precision of the analysis and annotation burden upon elimination, as well as modularity. We formalize the core of Jazz , prove it sound for privacy via a logical relation for metric preservation, and illustrate its expressive power through a number of case studies drawn from the recent differential privacy literature.

Funder

ANID FONDECYT

ANID Millennium Science Initiative Program code

NSF

Publisher

Association for Computing Machinery (ACM)

Subject

Software

Reference61 articles.

1. Deep Learning with Differential Privacy

2. Amal Ahmed. 2004. Semantics of Types for Mutable State . Ph.D. Dissertation. Princeton University.

3. Amal Ahmed. 2006. Step-indexed syntactic logical relations for recursive and quantified types. In Programming Languages and Systems, 15th European Symposium on Programming, ESOP 2006, Held as Part of the Joint European Conferences on Theory and Practice of Software, ETAPS 2006, Vienna, Austria, March 27–28, 2006, Proceedings (Lecture Notes in Computer Science), Vol. 3924. Springer, 69–83.

4. Synthesizing coupling proofs of differential privacy

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