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NoRBERT: Transfer Learning for Requirements Classification

机译:NoRBERT:转移学习进行需求分类

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Classifying requirements is crucial for automatically handling natural language requirements. The performance of existing automatic classification approaches diminishes when applied to unseen projects because requirements usually vary in wording and style. The main problem is poor generalization. We propose NoRBERT that fine-tunes BERT, a language model that has proven useful for transfer learning. We apply our approach to different tasks in the domain of requirements classification. We achieve similar or better results F1-scores of up to 94%) on both seen and unseen projects for classifying functional and non-functional requirements on the PROMISE NFR dataset. NoRBERT outperforms recent approaches at classifying non-functional requirements subclasses. The most frequent classes are classified with an average F1-score of 87%. In an unseen project setup on a relabeled PROMISE NFR dataset, our approach achieves an improvement of 15 percentage points in average F1 score compared to recent approaches. Additionally, we propose to classify functional requirements according to the included concerns, i.e., function, data, and behavior. We labeled the functional requirements in the PROMISE NFR dataset and applied our approach. NoRBERT achieves an F1-score of up to 92%. Overall, NoRBERT improves requirements classification and can be applied to unseen projects with convincing results.
机译:需求分类对于自动处理自然语言需求至关重要。现有要求自动分类的方法在应用于看不见的项目时会降低性能,因为要求通常在措辞和样式上有所不同。主要问题是泛化能力差。我们建议使用NoRBERT来微调BERT,这是一种已证明对迁移学习有用的语言模型。我们将我们的方法应用于需求分类领域中的不同任务。我们取得相似或更好的结果F 1 -在可见和不可见项目上的得分最高为94%),以对PROMISE NFR数据集上的功能和非功能需求进行分类。在对非功能需求子类进行分类时,NoRBERT优于最新方法。最常见的类别被分类为平均F 1 得分为87%。在重新标记的PROMISE NFR数据集上看不见的项目设置中,我们的方法将平均F提高了15个百分点 1 分数与最近的方法相比。另外,我们建议根据所包含的关注点(即功能,数据和行为)对功能需求进行分类。我们在PROMISE NFR数据集中标记了功能要求,并应用了我们的方法。 NoRBERT取得F 1 -得分高达92%。总体而言,NoRBERT改进了需求分类,并且可以应用到看不见的项目中,并具有令人信服的结果。

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