Microtask检测

Ryen W. White, E. Nouri, James Woffinden-Luey, Mark J. Encarnación, S. Jauhar
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引用次数: 5

摘要

信息系统,如任务管理应用程序和数字助理,可以帮助人们跟踪不同类型和不同持续时间的任务,从几分钟到几天或几周不等。帮助人们更好地管理他们的任务和时间是辅助技术的核心能力,它位于支持更有效地获取和使用信息的更广泛背景下。在一天的过程中,通常有许多短时间的停机时间(例如,五分钟或更少)可供个人使用。微任务是指可以在很短的时间内完成的简单任务。在任务列表中识别微任务可以帮助人们利用这些低活动的时期来完成他们的任务积压。我们将可操作任务定义为需要完成或执行的自包含任务。然而,并不是所有的待办任务都是可操作的。许多任务列表是可以在任何时候完成的杂项的集合(例如,要读的书,要看的电影),笔记(例如,姓名,地址),或者单个项目是列表本身就是任务的组成部分(例如,杂货清单)。在本文中,我们介绍了微任务检测的新挑战,并提出了机器学习模型,用于自动确定哪些任务是可操作的,哪些可操作的任务是微任务。实验表明,我们的模型可以准确地识别可操作的任务,准确地检测可操作的微任务,并且我们可以将这些模型结合起来生成一个将微任务检测扩展到所有任务的解决方案。我们详细讨论了我们的发现,以及它们的局限性。这些发现对帮助人们充分利用时间的系统设计具有启示意义。
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Microtask Detection
Information systems, such as task management applications and digital assistants, can help people keep track of tasks of different types and different time durations, ranging from a few minutes to days or weeks. Helping people better manage their tasks and their time are core capabilities of assistive technologies, situated within a broader context of supporting more effective information access and use. Throughout the course of a day, there are typically many short time periods of downtime (e.g., five minutes or less) available to individuals. Microtasks are simple tasks that can be tackled in such short amounts of time. Identifying microtasks in task lists could help people utilize these periods of low activity to make progress on their task backlog. We define actionable tasks as self-contained tasks that need to be completed or acted on. However, not all to-do tasks are actionable. Many task lists are collections of miscellaneous items that can be completed at any time (e.g., books to read, movies to watch), notes (e.g., names, addresses), or the individual items are constituents in a list that is itself a task (e.g., a grocery list). In this article, we introduce the novel challenge of microtask detection, and we present machine-learned models for automatically determining which tasks are actionable and which of these actionable tasks are microtasks. Experiments show that our models can accurately identify actionable tasks, accurately detect actionable microtasks, and that we can combine these models to generate a solution that scales microtask detection to all tasks. We discuss our findings in detail, along with their limitations. These findings have implications for the design of systems to help people make the most of their time.
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