Emotions at work have long been identified as critical signals of work motivations, status, and attitudes, and as predictors of various work-related outcomes. When more and more employees work remotely, these emotional signals of workers become harder to observe through daily, face-to-face communications. The use of online platforms to communicate and collaborate at work provides an alternative channel to monitor the emotions of workers. This paper studies how emojis, as non-verbal cues in online communications, can be used for such purposes and how the emotional signals in emoji usage can be used to predict future behavior of workers. In particular, we present how the developers on GitHub use emojis in their work-related activities. We show that developers have diverse patterns of emoji usage, which can be related to their working status including activity levels, types of work, types of communications, time management, and other behavioral patterns. Developers who use emojis in their posts are significantly less likely to dropout from the online work platform. Surprisingly, solely using emoji usage as features, standard machine learning models can predict future dropouts of developers at a satisfactory accuracy. Features related to the general use and the emotions of emojis appear to be important factors, while they do not rule out paths through other purposes of emoji use.
翻译:长期以来,工作场所的情感被确定为工作动机、地位和态度的关键信号,以及各种工作相关结果的预测。当越来越多的员工远程工作时,这些工人的情感信号就更加难以通过日常面对面的通信来观察。使用在线平台进行工作交流与合作提供了监测工人情绪的替代渠道。本文研究如何将情绪信号作为在线通信中的非语言提示用于这些目的,以及如何将情感信号用于预测员工的未来行为。特别是,我们介绍GitHub的开发商如何在与工作相关的活动中使用情感信号。我们显示,开发商有着不同的情感使用模式,这与他们的工作状况有关,包括活动水平、工作类型、通信类型、时间管理和其他行为模式。在在线通信中使用情绪的开发商明显地不太可能从在线工作平台中辍学。令人惊讶的是,仅仅使用情绪用户,标准机器学习模型可以预测未来开发商在与工作相关的活动中的辍学情况,同时使用其他令人满意的情感选择。