以实现为中心的文档业务规则分类

Preethu Rose Anish, A. Sainani, Abdul Ahmed, S. Ghaisas
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引用次数: 8

摘要

在大型多地点多厂商项目中,研究需求文档以理解问题域并推断所提出问题的可能解决方案是需求工程中的一项重要活动。阅读用户需求规范(URS)以创建软件需求规范(SRS)的过程是一项知识密集型活动,它先于其他几个重要的软件工程(SE)活动,如设计和测试计划。根据软件工程师使用的特定于实现的知识元素对URS的自动解释在过去已经有过报道。这种解释的目的是减少与手工提取知识元素以及随后将其“翻译”为那些必须构建预期软件的人所理解的原语相关的工作。在本文中,我们提出了一个深度学习模型,用于对其中一个知识元素(即业务规则)进行以实现为中心的分类。我们讨论了一种基于双向长短期记忆网络(BiLSTM)的方法来捕获每个单词的上下文信息,然后通过注意模型来聚合这些单词的有用信息以获得最终分类。我们的模型采用端到端架构,不依赖于任何手工制作的特性。
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Implementation-Centric Classification of Business Rules from Documents
In large multi-site multi-vendor projects, studying requirement documents to understand the problem domain and inferring possible solution to the posed problem is an important activity in Requirements Engineering. The process of reading User require-ments Specification (URS) to create Software Requirement Speci-fication (SRS) is a knowledge intensive activity that precedes sev-eral other important Software Engineering (SE) activities such as design and test plans. Automated Interpretation of the URS in terms of implementation-specific knowledge elements for software engineers' consumption has been reported in the past. The aim of such an interpretation is to reduce the effort associated with a manual extraction of knowledge elements and subsequently, their "translation" into primitives understood by those who must build the intended software. In this paper, we present a deep learning model for an implementation-centric classification of one such knowledge element, namely, business rules. We discuss an approach based on a Bidirectional Long Short Term Memory Network (BiLSTM) to capture the context information for each word, followed by an attention model to aggregate useful infor-mation from these words to get to the final classification. Our model adopts an end-to-end architecture that does not rely on any handcrafted features.
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