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Comparative analysis of requirements change prediction models: manual, linguistic, and neural network

机译:需求变化预测模型的比较分析:手动,语言和神经网络

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Requirement change propagation, if not managed, may lead to monetary losses or project failure. The a posteriori tracking of requirement dependencies is a well-established practice in project and change management. The identification of these dependencies often requires manual input by one or more individuals with intimate knowledge of the project. Moreover, the definition of these dependencies that help to predict requirement change is not currently found in the literature. This paper presents two industry case studies of predicting system requirement change propagation through three approaches: manually, linguistically, and bag-of-words. Dependencies are manually and automatically developed between requirements from textual data and computationally processed to develop surrogate models to predict change. Two types of relationship generation, manual keyword selection and part-of-speech tagging, are compared. Artificial neural networks are used to create surrogate models to predict change. These approaches are evaluated on three connectedness metrics: shortest path, path count, and maximum flow rate. The results are given in terms of search depth needed within a requirements document to identify the subsequent changes. The semi-automated approach yielded the most accurate results, requiring a search depth of 11%, but sacrifices on automation. The fully automated approach is able to predict requirement change within a search depth of 15% and offers the benefits of full minimal human input.
机译:需求变更的传播,如果不加以管理,可能导致金钱损失或项目失败。对需求依赖关系的事后跟踪是项目和变更管理中公认的实践。确定这些依赖关系通常需要一个或多个对项目有深入了解的个人进行手动输入。而且,目前在文献中没有找到有助于预测需求变化的这些依赖性的定义。本文提供了两个行业案例研究,它们通过三种方法来预测系统需求变更的传播:手动,语言和词袋。在来自文本数据的需求之间手动并自动地开发依赖关系,并进行计算处理以开发替代模型以预测变化。比较了两种类型的关系生成,即手动关键字选择和词性标记。人工神经网络用于创建替代模型以预测变化。这些方法是根据三个连通性指标进行评估的:最短路径,路径数和最大流速。结果是根据需求文档中确定后续更改所需的搜索深度给出的。半自动方法产生了最准确的结果,需要11%的搜索深度,但牺牲了自动化。完全自动化的方法能够在15%的搜索深度范围内预测需求变化,并提供最少的人工输入。

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