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This knowledge base is first initialized by the acquisition of the lexical domain knowledge, then progressively enriched with the domain terminology given by the user and with the requirements knowledge extracted from the user's graphics and texts. During initialization and enrichment, the network manager validates the knowledge structurally. This ensures the logical consistency of the base which is then checked for inconsistencies and ambiguities specific to the domain of software requirements. From a software engineering point of view, the originality of DASERT is that it provides a semantic checking of an informal specification by interpreting the natural language comments. From a knowledge acquisition point of view, DASERT allows acquisition from texts to build the kernel of a knowledge base which is then used to guide the semantic parsing of texts during the acquisition of the specification itself. 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引用次数: 7
摘要
摘要提出了一种基于知识的软件工程工具DASERT (Detection of anomaly in software engineering Requirements Texts),用于以自然语言获取和验证功能需求。用户通过非正式的方法描述功能规范,使用带有自然语言注释的图形。在这个细化步骤中,系统通过对注释进行语义处理以检测歧义或不一致来验证文档。为此,它使用自然语言处理和知识库工程。DASERT的内核是一个类似于kl - one的语义网络,它有助于对注释及其语义表示进行语义解析。该知识库首先通过获取词汇领域知识来初始化,然后逐渐使用用户给出的领域术语和从用户的图形和文本中提取的需求知识来丰富。在初始化和丰富过程中,网络管理员从结构上验证知识。这确保了基础的逻辑一致性,然后检查特定于软件需求领域的不一致性和模糊性。从软件工程的角度来看,DASERT的独创性在于它通过解释自然语言注释来提供对非正式规范的语义检查。从知识获取的角度来看,DASERT允许从文本中获取以构建知识库的内核,然后在获取规范本身期间使用该知识库来指导文本的语义解析。此外,表征形式主义提供了获取和验证的统一视图。
Acquisition and validation of software requirements
Abstract This paper presents a knowledge-based software engineering tool, DASERT (Detection of Anomalies in Software Engineering Requirements Texts), to acquire and validate functional requirements in natural language. The user describes the functional specifications through informal methods, using graphics with comments in natural language. During this elaboration step the system validates the document by processing the comments semantically to detect ambiguities or inconsistencies. To do so it uses natural language processing and knowledge base engineering. DASERT's kernel is a KL-ONE-like semantic network, which helps the semantic parsing of the comments and their semantic representation. This knowledge base is first initialized by the acquisition of the lexical domain knowledge, then progressively enriched with the domain terminology given by the user and with the requirements knowledge extracted from the user's graphics and texts. During initialization and enrichment, the network manager validates the knowledge structurally. This ensures the logical consistency of the base which is then checked for inconsistencies and ambiguities specific to the domain of software requirements. From a software engineering point of view, the originality of DASERT is that it provides a semantic checking of an informal specification by interpreting the natural language comments. From a knowledge acquisition point of view, DASERT allows acquisition from texts to build the kernel of a knowledge base which is then used to guide the semantic parsing of texts during the acquisition of the specification itself. Moreover, the representation formalism provides a unified view of acquisition and validation.