EDEFuzz: A Web API Fuzzer for Excessive Data Exposures
January 23, 2023 ยท Declared Dead ยท ๐ International Conference on Software Engineering
"No code URL or promise found in abstract"
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Authors
Lianglu Pan, Shaanan Cohney, Toby Murray, Van-Thuan Pham
arXiv ID
2301.09258
Category
cs.CR: Cryptography & Security
Citations
21
Venue
International Conference on Software Engineering
Last Checked
3 months ago
Abstract
APIs often transmit far more data to client applications than they need, and in the context of web applications, often do so over public channels. This issue, termed Excessive Data Exposure (EDE), was OWASP's third most significant API vulnerability of 2019. However, there are few automated tools -- either in research or industry -- to effectively find and remediate such issues. This is unsurprising as the problem lacks an explicit test oracle: the vulnerability does not manifest through explicit abnormal behaviours (e.g., program crashes or memory access violations). In this work, we develop a metamorphic relation to tackle that challenge and build the first fuzzing tool -- that we call EDEFuzz -- to systematically detect EDEs. EDEFuzz can significantly reduce false negatives that occur during manual inspection and ad-hoc text-matching techniques, the current most-used approaches. We tested EDEFuzz against the sixty-nine applicable targets from the Alexa Top-200 and found 33,365 potential leaks -- illustrating our tool's broad applicability and scalability. In a more-tightly controlled experiment of eight popular websites in Australia, EDEFuzz achieved a high true positive rate of 98.65% with minimal configuration, illustrating our tool's accuracy and efficiency.
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