NLP4IP:基于自然语言处理的问题优先级推荐方法

Saad Shafiq, A. Mashkoor, Christoph Mayr-Dorn, Alexander Egyed
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引用次数: 4

摘要

本文提出了一种基于自然语言处理的问题(例如,故事,bug或任务)优先级推荐方法,称为NLP4IP。提出的半自动方法考虑了项目利益相关者定义的现有问题的优先级和故事点属性,并设计了一个能够动态预测新添加或修改问题的排名的推荐模型。NLP4IP在使用JIRA问题跟踪软件的6个存储库中的19个项目上进行了评估,总共有29,698个问题。还进行了全面的基准研究,以比较各种机器学习模型的性能。研究结果显示,在验证集上评估时,top@3的平均准确度为81%,均方误差为2.2。提出的方法的适用性以JIRA插件的形式进行了演示,该插件说明了新开发的机器学习模型所做的预测。该数据集也已公开,以支持在该领域工作的其他研究人员。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NLP4IP: Natural Language Processing-based Recommendation Approach for Issues Prioritization
This paper proposes a recommendation approach for issues (e.g., a story, a bug, or a task) prioritization based on natural language processing, called NLP4IP. The proposed semi-automatic approach takes into account the priority and story points attributes of existing issues defined by the project stakeholders and devises a recommendation model capable of dynamically predicting the rank of newly added or modified issues. NLP4IP was evaluated on 19 projects from 6 repositories employing the JIRA issue tracking software with a total of 29,698 issues. A comprehensive benchmark study was also conducted to compare the performance of various machine learning models. The results of the study showed an average top@3 accuracy of 81% and a mean squared error of 2.2 when evaluated on the validation set. The applicability of the proposed approach is demonstrated in the form of a JIRA plug-in illustrating predictions made by the newly developed machine learning model. The dataset has also been made publicly available in order to support other researchers working in this domain.
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