论文标题

通过分析与机器学习的聊天中的基于文本的交流来识别软件开发团队的心情

Identifying the Mood of a Software Development Team by Analyzing Text-Based Communication in Chats with Machine Learning

论文作者

Klünder, Jil, Horstmann, Julian, Karras, Oliver

论文摘要

软件开发涵盖了许多协作任务,通常涉及几个人。密切的协作和开发团队不同成员的同步需要有效的沟通。一个建立的通信渠道是会议,但是通常不像预期的那样有效。几种方法已经集中在会议分析上,以确定效率低下的原因和不满意的会议成果。除了会议外,开发团队中经常使用基于文本的沟通渠道,例如聊天和电子邮件。通过这些渠道进行沟通需要与会议中类似的适当行为,以实现令人满意和方便的协作。但是,这些渠道尚未在研究中进行广泛研究。在本文中,我们提出了一种分析有关对话语调,发件人和接收器的熟悉程度,发件人的情感和使用的适当性的基于文本的交流中人际关系行为的方法。我们根据5.5个月的Zulip聊天中发送的1947年聊天中的1947年消息来评估我们的方法。使用我们的方法,与人类评分相比,可以自动将书面句子分类为正,中性或阴性,平均准确度为62.97%。尽管有这种粗粒的分类,但仍有可能总体了解群体情绪中文本交流和趋势的充分性。

Software development encompasses many collaborative tasks in which usually several persons are involved. Close collaboration and the synchronization of different members of the development team require effective communication. One established communication channel are meetings which are, however, often not as effective as expected. Several approaches already focused on the analysis of meetings to determine the reasons for inefficiency and dissatisfying meeting outcomes. In addition to meetings, text-based communication channels such as chats and e-mails are frequently used in development teams. Communication via these channels requires a similar appropriate behavior as in meetings to achieve a satisfying and expedient collaboration. However, these channels have not yet been extensively examined in research. In this paper, we present an approach for analyzing interpersonal behavior in text-based communication concerning the conversational tone, the familiarity of sender and receiver, the sender's emotionality, and the appropriateness of the used language. We evaluate our approach in an industrial case study based on 1947 messages sent in a group chat in Zulip over 5.5 months. Using our approach, it was possible to automatically classify written sentences as positive, neutral, or negative with an average accuracy of 62.97% compared to human ratings. Despite this coarse-grained classification, it is possible to gain an overall picture of the adequacy of the textual communication and tendencies in the group mood.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源