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Early Diagnostics on Team Communication: Experience-Based Forecasts on Student Software Projects

机译:团队沟通的早期诊断:学生软件项目的基于经验的预测

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Effective team communication is a prerequisite for software quality and project success. It implies correctly elicited customer requirements, conduction of occurring change requests and to adhere releases. Team communication is a complex construct that consists of numerous characteristics, individual styles, influencing factors and dynamic intensities during a project. These elements are complicated to be measured or scheduled, especially in newly formed teams. According to software developers with few experiences in teams, it would be highly desirable to recognize dysfunctional or underestimated communication behaviors already in early project phases. Otherwise, negative affects may cause delay of releases or even endanger software quality. We introduce an approach on the feasibility of forecasting team's communication behavior in student software projects. We build a very first forecasting model that involves software engineering and industrial psychological terms to extract multi week communication forecasts with accurate results. The model consists of a k-nearest neighbor machine learning algorithm and is trained and evaluated with 34 student software projects from a previously taken field study. This study is an encouraging first step towards forecasting team communication to reveal potential miscommunications during a project. It is our aim to give young software developing teams an experience-based assistance about their information flow and enable adjustment for dysfunctional communication, to avoid fire fighting situation or even risks of alternating software qualities.
机译:有效的团队沟通是软件质量和项目成功的前提。这意味着正确提出了客户要求,进行了更改请求并遵守了发行版。团队沟通是一个复杂的结构,包含许多特征,个人风格,影响因素和项目过程中的动态强度。这些要素很难测量或安排,尤其是在新组建的团队中。根据很少有团队经验的软件开发人员,非常需要认识到在项目早期阶段就已经出现了功能失常或被低估的通信行为。否则,负面影响可能会导致发布延迟,甚至危及软件质量。我们介绍了一种预测学生软件项目中团队交流行为的可行性的方法。我们建立了第一个涉及软件工程和行业心理术语的预测模型,以提取具有准确结果的多周交流预测。该模型由一个k近邻机器学习算法组成,并使用来自先前进行的现场研究的34个学生软件项目进行了训练和评估。这项研究是朝着预测团队沟通以揭示项目期间潜在的沟通错误的令人鼓舞的第一步。我们的目标是为年轻的软件开发团队提供有关其信息流的基于经验的帮助,并针对不正常的通信进行调整,从而避免发生火灾情况或什至出现软件质量交替变化的风险。

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