Abstract:
Static source code analysis for the detection of vulnerabilities may generate a huge amount of results making it difficult to manually verify all of them. In addition, st...Show MoreMetadata
Abstract:
Static source code analysis for the detection of vulnerabilities may generate a huge amount of results making it difficult to manually verify all of them. In addition, static code analysis yields a large number of false positives. Consequently, software developers may ignore the results of static code analysis. This paper analyzes the results of static code analysis tools to identify false positive trends per tool. The novel idea is to assist developers and analysts identify the likelihood of a finding to be an actual true positive. This paper proposes an algorithm that makes use of a new critical feature, a personal identifier, which assists labeling the findings correctly as true or false. Experiments verified identification of true positives with a higher level of accuracy.
Date of Conference: 10-13 December 2018
Date Added to IEEE Xplore: 24 January 2019
ISBN Information: