Anonymity in social media platforms keeps users hidden behind a keyboard. This absolves users of responsibility, allowing them to engage in online rage, hate speech, and other text-based toxicity that harms online well-being. Recent research in the field of Digital Emotion Regulation (DER) has revealed that indulgence in online toxicity can be a result of ineffective emotional regulation (ER). This, we believe, can be reduced by educating users about the consequences of their actions. Prior DER research has primarily focused on exploring digital emotion regulation practises, identifying emotion regulation using multimodal sensors, and encouraging users to act responsibly in online conversations. While these studies provide valuable insights into how users consciously utilise digital media for emotion regulation, they do not capture the contextual dynamics of emotion regulation online. Through interaction design, this work provides an intervention for the delivery of ER support. It introduces a novel technique for identifying the need for emotional regulation in online conversations and delivering information to users in a way that integrates didactic learning into their daily life. By fostering self-reflection in periods of intensified emotional expression, we present a graph-based framework for on-the-spot emotion regulation support in online conversations. Our findings suggest that using this model in a conversation can help identify its influential threads/nodes to locate where toxicity is concentrated and help reduce it by up to 12\%. This is the first study in the field of DER that focuses on learning transfer by inducing self-reflection and implicit emotion regulation.
翻译:社交媒体平台的匿名性让用户隐藏在键盘背后。 这免除了用户的责任, 让他们可以参与在线愤怒、 仇恨言论和其他伤害在线福祉的基于文本的毒性。 最近在数字情感监管(DER)领域的研究表明, 在线毒性的宽容可能是情感监管无效的结果( ER) 。 我们认为, 通过教育用户了解其行动的后果可以减少这一点。 先前的DER研究主要侧重于探索数字情感监管做法, 利用多式联运传感器识别情感监管, 鼓励用户在在线对话中负责任地行事。 虽然这些研究为用户如何有意识地利用数字媒体进行情感监管提供了宝贵的洞察力, 但他们并没有在网上捕捉到情感监管的背景动态。 通过互动设计, 这项工作为提供干预性在线情感监管提供支持。 引入了一种新的技术, 确定在线对话中情感监管的必要性, 并将信息传递到用户日常生活中, 将实用的学习融入到强化情感表达的时期, 我们提出了一个基于图表的框架, 用于在网络情感监管中有意识地使用网络情感监管支持的在线情感监管, 将这种情感监管的实地定位定位到情感监管的深度。</s>