Story Point Level Classification by Text Level Graph Neural Network

H. Phan, A. Jannesari
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引用次数: 1

Abstract

Estimating the software projects’ efforts developed by agile methods is important for project managers or technical leads. It provides a summary as a first view of how many hours and developers are required to complete the tasks. There are research works on automatic predicting the software efforts, including Term Frequency - Inverse Document Frequency (TFIDF) as the traditional approach for this problem. Graph Neural Network is a new approach that has been applied in Natural Language Processing for text classification. The advantages of Graph Neural Network are based on the ability to learn information via graph data structure, which has more representations such as the relationships between words compared to approaches of vectorizing sequence of words. In this paper, we show the potential and possible challenges of Graph Neural Network text classification in story point level estimation. By the experiments, we show that the GNN Text Level Classification can achieve as high accuracy as about 80% for story points level classification, which is comparable to the traditional approach. We also analyze the GNN approach and point out several current disadvantages that the GNN approach can improve for this problem or other problems in software engineering.
基于文本级图神经网络的故事点级别分类
评估通过敏捷方法开发的软件项目的工作量对项目经理或技术领导来说是很重要的。它提供了一个总结,作为完成任务所需的时间和开发人员的第一个视图。在软件自动预测方面有很多研究工作,传统的预测方法是词频-逆文档频率(TFIDF)。图神经网络是一种应用于自然语言处理的文本分类新方法。图神经网络的优势在于其通过图数据结构学习信息的能力,与向量化词序列的方法相比,图数据结构具有更多的表征,如词之间的关系。在本文中,我们展示了图神经网络文本分类在故事点水平估计中的潜力和可能的挑战。实验表明,GNN文本级别分类在故事点级别分类上的准确率高达80%左右,与传统方法相当。我们还分析了GNN方法,并指出了GNN方法目前可以改进的几个缺点,以解决这个问题或软件工程中的其他问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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