Natural language ambiguity resolution by intelligent semantic annotation of software requirements
作者:Fariha Ashfaq, Imran Sarwar Bajwa
摘要
Natural Language (NL) is the root cause of ambiguity in the SRS document. The quality of the software development process can be improved by mitigating the risk with the use of semantically controlled representation. A possible solution to handle ambiguity can be the use of a mathematical formal logic representation in place of NL to capture software requirements. However, the use of formal logic is a complex task. A wrongly written formal logic will be difficult to handle and it will create serious problems in later stages of software development. Furthermore, stakeholders are typically not able to understand mathematical logic. Hence, this solution does not look feasible. Another possible way of addressing above discussed ambiguity problem is the use of controlled natural languages (CNL). It can work as a bridge between NL and formal representation. Since Requirement Analysis is based on communication and the analyst’s experience, it can be modeled up to a certain limit. This limit gives birth to controlled language. If the document is written in a controlled language, it will be feasible for the development team to use a simpler and less costly linguistic tool. The CNLs are syntactically unambiguous, semantically consistent and, controlled. Several CNLs could be found in literature such as ACE, PENG, CPL, Formalized-English, and Semantics of Business Vocabulary and Rules (SBVR), etc. We aim to use an SBVR based CNL to capture stakeholder’s requirements and prepare an SRS document using SBVR. Such software requirements will not only be syntactically clear but also semantically consistent.
论文关键词:Software requirements, Ambiguity Resolution, Semantic annotation, SBVR
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论文官网地址:https://doi.org/10.1007/s10515-021-00291-0