基于上下文感知顺序排序的任务优先级

Chuxu Zhang, Julia Kiseleva, S. Jauhar, Ryen W. White
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引用次数: 3

摘要

人们依靠任务管理应用程序和数字助理来捕获和跟踪他们的任务,并帮助他们执行任务。组织和安排任务时间的负担仍然由这些系统的用户承担,尽管与这些活动相关的认知负荷很高。用户将从任务管理系统中受益匪浅,该系统能够对待处理任务进行优先级排序,从而节省时间和精力。在本文中,我们做出了三个主要贡献。首先,我们提出了任务优先级问题,将其表述为给定用户先前与任务管理系统交互历史的待处理任务的排序。其次,我们对一个流行任务管理应用程序的大规模匿名、去识别日志进行了广泛的分析,得出了一个真实世界任务的数据集,从中学习和评估我们提出的系统。我们还确定了人们如何将任务记录为完成的模式,这些模式与任务的性质一致。第三,我们提出了一种新的上下文深度学习解决方案,能够执行个性化的任务优先级。在一系列测试中,我们表明该方法优于以前工作中的几个操作基线和其他顺序排序模型。我们的研究结果对理解人们使用数字工具对任务进行优先排序和管理的方式,以及对任务管理应用程序用户的支持设计具有启示意义。
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Grounded Task Prioritization with Context-Aware Sequential Ranking
People rely on task management applications and digital assistants to capture and track their tasks, and help with executing them. The burden of organizing and scheduling time for tasks continues to reside with users of these systems, despite the high cognitive load associated with these activities. Users stand to benefit greatly from a task management system capable of prioritizing their pending tasks, thus saving them time and effort. In this article, we make three main contributions. First, we propose the problem of task prioritization, formulating it as a ranking over a user’s pending tasks given a history of previous interactions with a task management system. Second, we perform an extensive analysis on the large-scale anonymized, de-identified logs of a popular task management application, deriving a dataset of grounded, real-world tasks from which to learn and evaluate our proposed system. We also identify patterns in how people record tasks as complete, which vary consistently with the nature of the task. Third, we propose a novel contextual deep learning solution capable of performing personalized task prioritization. In a battery of tests, we show that this approach outperforms several operational baselines and other sequential ranking models from previous work. Our findings have implications for understanding the ways people prioritize and manage tasks with digital tools, and in the design of support for users of task management applications.
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