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Study of Various Classifiers for Identification and Classification of Non-functional Requirements

机译:非功能需求识别和分类的各种分类器研究

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Identification of non-functional requirements in an early phase of software development process is crucial for creating a proper software design. These requirements are often neglected or given in too general forms. However, interviews and other sources of requirements often include important references also to non-functional requirements which are embedded in a bigger textual context. The non-functional requirements have to be extracted from these contexts and should be presented in a formulated and standardized way to support software design. The set of requirements extracted from their textual context have to be classified to formalize them. This task is to be accomplished manually but it can be very demanding and error-prone. Several attempts have been made to support identification and classification tasks using supervised and semi-supervised learning processes. These efforts have achieved remarkable results. Researchers were mainly focused on the performance of classification measured by precision and recall. However, creating a tool which can support business analysts with their requirements elici-tation tasks, execution time is also an important factor which has to be taken into account. Knowing the performance and the results of benchmarks can help business analysts to choose a proper method for their classification tasks. Our study presented in this article focuses on both the comparison of performances of the classification processes and their execution time to support the choice among the methods.
机译:在软件开发过程的早期阶段确定非功能性需求对于创建正确的软件设计至关重要。这些要求通常被忽略或以太笼统的形式给出。但是,访谈和其他要求的来源通常也包含对非功能性要求的重要参考,这些功能性要求嵌入更大的文本环境中。必须从这些上下文中提取非功能性需求,并应以公式化和标准化的方式提出支持软件设计的需求。从它们的文本上下文中提取的需求集必须进行分类以将其形式化。该任务是手动完成的,但它可能非常苛刻且容易出错。为了使用监督和半监督学习过程来支持识别和分类任务,已经进行了多种尝试。这些努力取得了显著成效。研究人员主要集中在通过精确度和召回率衡量的分类性能上。但是,创建一种可以为业务分析人员提供需求评估任务的工具,执行时间也是必须考虑的重要因素。了解基准的性能和结果可以帮助业务分析人员为他们的分类任务选择合适的方法。本文中介绍的我们的研究集中在比较分类过程的性能及其执行时间上,以支持方法之间的选择。

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