论文标题
主动对话代理的无贪睡通知系统
A Snooze-less User-Aware Notification System for Proactive Conversational Agents
论文作者
论文摘要
智能手机和电子设备的无处不在,已将大量信息与消费者的指尖以及数字内容的创建者的指尖一起放置。这导致每秒发出有关发布的YouTube视频的警报,向推文,电子邮件和个人消息发出数百万个通知。添加与工作相关的通知,我们可以看到通知数量增加的速度。这不仅会降低生产率和集中度,而且还显示出引起警觉疲劳。这种情况使用户对通知不敏感,从而导致他们忽略或错过重要的警报。根据用户的工作方式,丢失通知的成本可能从仅带来的不便到生与死。因此,在这项工作中,我们提出了一个机敏和通知框架,该框架可以智能发出,抑制和聚合基于事件严重性,用户偏好或时间表的通知,以最大程度地减少用户忽略或窃取通知的需求,并可能忘记忘记解决重要的通知。我们的框架可以作为后端服务部署,但更适合将积极的对话代理集成到积极主动的对话代理中,该领域在数字化转型时代,电子邮件服务,新闻服务等方面引起了很多关注。但是,主要的挑战在于开发正确的机器学习算法,该算法可以从广泛的用户中学习模型,同时将这些模型自定义为单个用户的偏好。
The ubiquity of smart phones and electronic devices has placed a wealth of information at the fingertips of consumers as well as creators of digital content. This has led to millions of notifications being issued each second from alerts about posted YouTube videos to tweets, emails and personal messages. Adding work related notifications and we can see how quickly the number of notifications increases. Not only does this cause reduced productivity and concentration but has also been shown to cause alert fatigue. This condition makes users desensitized to notifications, causing them to ignore or miss important alerts. Depending on what domain users work in, the cost of missing a notification can vary from a mere inconvenience to life and death. Therefore, in this work, we propose an alert and notification framework that intelligently issues, suppresses and aggregates notifications, based on event severity, user preferences, or schedules, to minimize the need for users to ignore, or snooze their notifications and potentially forget about addressing important ones. Our framework can be deployed as a backend service, but is better suited to be integrated into proactive conversational agents, a field receiving a lot of attention with the digital transformation era, email services, news services and others. However, the main challenge lies in developing the right machine learning algorithms that can learn models from a wide set of users while customizing these models to individual users' preferences.