Despite the long history of studying instant messaging usage, we know very little about how today's people participate in group chat channels and interact with others inside a real-world organization. In this short paper, we aim to update the existing knowledge on how group chat is used in the context of today's organizations. The knowledge is particularly important for the new norm of remote works under the COVID-19 pandemic. We have the privilege of collecting two valuable datasets: a total of 4,300 group chat channels in Slack from an R&D department in a multinational IT company; and a total of 117 groups' performance data. Through qualitative coding of 100 randomly sampled group channels from the 4,300 channels dataset, we identified and reported 9 categories such as Project channels, IT-Support channels, and Event channels. We further defined a feature metric with 21 meta features (and their derived features) without looking at the message content to depict the group communication style for these group chat channels, with which we successfully trained a machine learning model that can automatically classify a given group channel into one of the 9 categories. In addition to the descriptive data analysis, we illustrated how these communication metrics can be used to analyze team performance. We cross-referenced 117 project teams and their team-based Slack channels and identified 57 teams that appeared in both datasets, then we built a regression model to reveal the relationship between these group communication styles and the project team performance. This work contributes an updated empirical understanding of human-human communication practices within the enterprise setting, and suggests design opportunities for the future of human-AI communication experience.
翻译:尽管研究速流信息使用情况的历史悠久,但我们对今天人们如何参与集体聊天渠道并与现实世界组织内其他人互动知之甚少。 在这份简短的论文中,我们的目标是更新关于今天各组织中如何使用集体聊天的现有知识。这种知识对于COVID-19大流行病下的远程工作新规范特别重要。我们有幸收集了两个宝贵的数据集:在多国信息技术公司研发部门缺乏的总共4 300个团体聊天渠道;以及总共117个团体业绩数据。通过对4 300个频道数据集中100个随机抽样分组频道进行质量编码,我们确定并报告了9个类别,如项目频道、信息技术支持渠道和事件渠道。我们进一步定义了具有21个元特征(及其衍生特征)的特征特征,而没有研究信息内容来描述这些团体聊天渠道的小组通信风格,我们成功地培训了一个机器学习模式,可以将某个团体的做法自动分类为9个类别之一。除了描述性数据分析数据分析外,我们还演示了这些通信方式的样式,例如项目渠道、信息技术支持渠道和事件渠道的9个类别。我们进一步界定了项目机会、模型(及其衍生特征)设计团队如何将人类通信模式和57个交流团队用于分析工作团队。