Identifying changes in individuals' behaviour and mood, as observed via content shared on online platforms, is increasingly gaining importance. Most research to-date on this topic focuses on either: (a) identifying individuals at risk or with a certain mental health condition given a batch of posts or (b) providing equivalent labels at the post level. A disadvantage of such work is the lack of a strong temporal component and the inability to make longitudinal assessments following an individual's trajectory and allowing timely interventions. Here we define a new task, that of identifying moments of change in individuals on the basis of their shared content online. The changes we consider are sudden shifts in mood (switches) or gradual mood progression (escalations). We have created detailed guidelines for capturing moments of change and a corpus of 500 manually annotated user timelines (18.7K posts). We have developed a variety of baseline models drawing inspiration from related tasks and show that the best performance is obtained through context aware sequential modelling. We also introduce new metrics for capturing rare events in temporal windows.
翻译:通过在线平台上共享的内容观察到的个人行为和情绪变化的发现正变得越来越重要,关于这一专题的多数研究目前侧重于:(a) 确定面临风险的个人或具有某种心理健康状况的个人,如果有一批职位,或者(b) 在职位一级提供同等的标签,这种工作的缺点是缺乏强大的时间成分,无法根据个人轨迹进行纵向评估,无法及时干预。我们在这里界定了一项新的任务,即根据在线共享的内容确定个人变化时刻。我们认为的变化是情绪(开关)突然变化或情绪逐渐上升(升级),我们制定了详细指南,记录变化时刻和500个手动用户附加说明时间表(18.7K个员额),我们开发了各种基线模型,从相关任务中汲取灵感,并表明最佳业绩是通过了解背景的顺序建模获得的。我们还为在时间窗口中捕捉罕见事件制定了新的衡量标准。