首页> 外文会议>IEEE International Workshop on Artificial Intelligence for Requirements Engineering >Weka meets TraceLab: Toward convenient classification: Machine learning for requirements engineering problems: A position paper
【24h】

Weka meets TraceLab: Toward convenient classification: Machine learning for requirements engineering problems: A position paper

机译:Weka遇到TraceLab:方便分类:机器学习要求工程问题:一个位置纸

获取原文

摘要

Requirements engineering encompasses many difficult, overarching problems inherent to its subareas of process, elicitation, specification, analysis, and validation. Requirements engineering researchers seek innovative, effective means of addressing these problems. One powerful tool that can be added to the researcher toolkit is that of machine learning. Some researchers have been experimenting with their own implementations of machine learning algorithms or with those available as part of the Weka machine learning software suite. There are some shortcomings to using “one off” solutions. It is the position of the authors that many problems exist in requirements engineering that can be supported by Weka's machine learning algorithms, specifically by classification trees. Further, the authors posit that adoption will be boosted if machine learning is easy to use and is integrated into requirements research tools, such as TraceLab. Toward that end, an initial concept validation of a component in TraceLab is presented that applies the Weka classification trees. The component is demonstrated on two different requirements engineering problems. Finally, insights gained on using the TraceLab Weka component on these two problems are offered.
机译:需求工程包括许多困难,其伪造的过程,诱导,规范,分析和验证所固有的困难。要求工程研究人员寻求创新,有效的解决这些问题的手段。可以添加到研究员工具包的一个强大的工具是机器学习的工具。一些研究人员一直在尝试自己的机器学习算法的实现,或者是作为Weka机器学习软件套件的一部分提供的。使用“One Off”解决方案存在一些缺点。作者是Weka的机器学习算法可以支持的要求工程中存在许多问题,具体而言,这是许多问题。此外,如果机器学习易于使用并且被集成到要求研究工具,如TraceLab,则会提高采用的作者。朝向该结束,介绍了TRACELAB中的组件的初始概念验证,其应用WEKA分类树。该组件在两个不同的要求工程问题上进行了说明。最后,提供了在这两个问题上使用TraceLab Weka组件获得的见解。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号