Feedback-driven side-channel analysis for networked applications


연구 분야: Analysis



학회: ISSTA 2020: Proceedings of the 29th ACM SIGSOFT International Symposium on Software Testing and Analysis


초록

Information leakage in software systems is a problem of growing importance. Networked applications can leak sensitive information even when they use encryption. For example, some characteristics of network packets, such as their size, timing and direction, are visible even for encrypted traffic. Patterns in these characteristics can be leveraged as side channels to extract information about secret values accessed by the application. In this paper, we present a new tool called AutoFeed for detecting and quantifying information leakage due to side channels in networked software applications. AutoFeed profiles the target system and automatically explores the input space, explores the space of output features that may leak information, quantifies the information leakage, and identifies the top-leaking features. Given a set of input mutators and a small number of initial inputs provided by the user, AutoFeed iteratively mutates inputs and periodically updates its leakage estimations to identify the features that leak the greatest amount of information about the secret of interest. AutoFeed uses a feedback loop for incremental profiling, and a stopping criterion that terminates the analysis when the leakage estimation for the top-leaking features converges. AutoFeed also automatically assigns weights to mutators in order to focus the search of the input space on exploring dimensions that are relevant to the leakage quantification. Our experimental evaluation on the benchmarks shows that AutoFeed is effective in detecting and quantifying information leaks in networked applications.


Author Profile
İsmet Burak Kadron

University of California at Santa Barbara USA

Austria
Author Profile
Nicolás Rosner

University of California at Santa Barbara USA

Austria
Author Profile
Tevfik Bultan

University of California at Santa Barbara USA

Austria

📄 논문 정보

발행 연도 2020년
인용수 8
출판 국가 Austria
사이트 ACM
좋아요 수 0

연관 논문 목록 (78건)