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A framework for constructing semantically composable feature models from natural language requirements

机译:根据自然语言需求构建语义可组合的特征模型的框架

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Software Product Line Engineering (SPLE) requires the construction of feature models from large, unstructured and heterogeneous documents, and the reliable derivation of product variants from the resulting model. This can be an arduous task when performed manually, and can be error-prone in the presence of a change in requirements. In this paper we introduce a tool suite which automatically processes natural-language requirements documents into a candidate feature model, which can be refined by the requirements engineer. The framework also guides the process of identifying variant concerns and their composition with other features. We also provide language support for specifying semantic variant feature compositions which are resilient to change. We show that feature models produced by this framework compare favourably with those produced by domain experts by application to a real-life industrial example.
机译:软件产品线工程(SPLE)要求从大型,非结构化和异构文档中构建特征模型,并从结果模型中可靠地推导产品变体。当手动执行时,这可能是一项艰巨的任务,并且在需求发生变化时可能容易出错。在本文中,我们介绍了一个工具套件,该套件可自动将自然语言的需求文档处理为候选要素模型,需求工程师可以对其进行完善。该框架还指导识别变体问题及其与其他功能的组合的过程。我们还提供语言支持,用于指定可适应变化的语义变体特征组成。我们展示了此框架产生的功能模型与领域专家通过应用于实际工业示例产生的特征模型相比具有优势。

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