Biblio

Filters: Keyword is natural language parsing  [Clear All Filters]
2015-01-13
John Slankas, Maria Riaz, Jason King, Laurie Williams.  2014.  Discovering Security Requirements from Natural Language. 36th International Conference on Software Engineering.

Project documentation often contains security-relevant statements that are indicative of the security requirements of a system. However these statements may not be explicitly specified or straightforward to locate. At best, requirements analysts manually extract applicable security requirements from project documents. However, security requirements that are not explicitly stated may not be considered during implementation. The goal of this research is to aid requirements analysts in generating security requirements through identifying securityrelevant statements in project documentation and providing context-specific templates to generate security requirements. First, we identify the most prevalent security objectives from software security literature. To identify security-relevant statements in project documentation, we propose a tool-based process to classify statements as related to zero or more security objectives. We then develop a set of context-specific templates to help translate the security objectives of each statement into explicit sets of security functional requirements. We evaluate our process on six documents from the electronic healthcare software industry, identifying 46% of statements as implicitly or explicitly related to security. Our classification approach identified security objectives with a precision of .82 and recall of .79. From our total set of classified statements, we extracted 16 context-specific templates that identify 41 reusable security requirements.