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首页> 外文期刊>International Journal of Interactive Mobile Technologies >Applying Machine Learning for Automatic User Story Categorization in Mobile Enterprises Application Development
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Applying Machine Learning for Automatic User Story Categorization in Mobile Enterprises Application Development

机译:应用机器学习在移动企业应用开发中自动用户故事分类

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Mobile enterprise applications (apps) are developed in dynamic and complex environments. Hardware characteristics, operating systems and development tools are constantly changing. In larger institutions, comprehensive corporate guidelines and requirements have to be followed. In addition, larger enterprises often develop numerous apps and lack an overview of development projects. Because of the size of such companies, a comprehensive direct information exchange between developers is often not practicable. In this situation, IT support is necessary, for example to prevent unnecessary duplication of work in the development of software artifacts such as user stories, app screen designs or code features within the company. One approach to overcome these challenges is to support reusing results from previous projects by building systems to organize and analyse the knowledge base of enterprise app development projects. For such systems an automatic categorization of artifacts is required. In this work we propose using a machine learning approach to categorize user stories. The approach is evaluated on a set of user stories from real-world mobile enterprise application development projects. The results are promising and suggest that machine learning approaches can be beneficially applied to user story classification in large companies.
机译:移动企业应用程序(应用程序)是在动态和复杂的环境中开发的。硬件特性,操作系统和开发工具不断变化。在较大的机构中,必须遵循全面的企业指南和要求。此外,较大的企业常常开发众多应用,缺乏开发项目的概述。由于这些公司的规模,开发人员之间的全面直接信息交流往往无法切实可行。在这种情况下,IT支持是必要的,例如,以防止在公司中的用户故事,应用程序屏幕设计或代码特征等软件工件中的开发中不必要的重复工作。一种克服这些挑战的一种方法是通过建立系统来支持以往的项目的重用结果来组织和分析企业应用程序开发项目的知识库。对于这种系统,需要自动分类伪影。在这项工作中,我们建议使用机器学习方法来分类用户故事。该方法是根据真实世界移动企业应用程序开发项目的一组用户故事进行评估。结果是有前途的,并表明机器学习方法可以有利地应用于大公司的用户故事分类。

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