Localizing Vulnerabilities Statistically From One Exploit


연구 분야: Strategies



학회: ASIA CCS '21: Proceedings of the 2021 ACM Asia Conference on Computer and Communications Security


초록

Automatic vulnerability diagnosis can help security analysts identify and, therefore, quickly patch disclosed vulnerabilities. The vulnerability localization problem is to automatically find a program point at which the "root cause" of the bug can be fixed. This paper employs a statistical localization approach to analyze a given exploit. Our main technical contribution is a novel procedure to systematically construct a test-suite which enables high-fidelity localization. We build our techniques in a tool called VulnLoc which automatically pinpoints vulnerability locations, given just one exploit, with high accuracy. VulnLoc does not make any assumptions about the availability of source code, test suites, or specialized knowledge of the type of vulnerability. It identifies actionable locations in its Top-5 outputs, where a correct patch can be applied, for about 88% of 43 CVEs arising in large real-world applications we study. These include 6 different classes of security flaws. Our results highlight the under-explored power of statistical analyses, when combined with suitable test-generation techniques.


Author Profile
Shiqi Shen

National University of Singapore Singapore Singapore

Singapore
Author Profile
Aashish Kolluri

National University of Singapore Singapore Singapore

Singapore
Author Profile
Zhen Dong

National University of Singapore Singapore Singapore

Singapore

📄 논문 정보

발행 연도 2021년
인용수 17
출판 국가 Singapore
사이트 ACM
좋아요 수 0

연관 논문 목록 (278건)