Affiliation:
1. Norwegian Computing Center, Oslo, Norway
2. Software Improvement Group, Amsterdam, The Netherlands
Abstract
Ensuring compliance with the General Data Protection Regulation (GDPR) is a crucial aspect of software development. This task, due to its time-consuming nature and requirement for specialized knowledge, is often deferred or delegated to specialized code reviewers. These reviewers, particularly when external to the development organization, may lack detailed knowledge of the software under review, necessitating the prioritization of their resources. To address this, we have designed two specialized views of a codebase to help code reviewers in prioritizing their work related to personal data: one view displays the types of personal data representation, while the other provides an abstract depiction of personal data processing, complemented by an optional detailed exploration of specific code snippets. Leveraging static analysis, our method identifies personal data-related code segments, thereby expediting the review process. Our approach, evaluated on four open-source GitHub applications, demonstrated a precision rate of 0.87 in identifying personal data flows. Additionally, we fact-checked the privacy statements of 15 Android applications. This solution, designed to augment the efficiency of GDPR-related privacy analysis tasks such as the Record of Processing Activities (ROPA), aims to conserve resources, thereby saving time and enhancing productivity for code reviewers.
Cited by
2 articles.
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1. Detection of Inconsistencies between Guidance Pages and Actual Data Collection of Third-party SDKs in Android Apps;Proceedings of the IEEE/ACM 11th International Conference on Mobile Software Engineering and Systems;2024-04-14
2. Finding Privacy-Relevant Source Code;2024 IEEE International Conference on Software Analysis, Evolution and Reengineering - Companion (SANER-C);2024-03-12