Analyzing and Predicting Task Reminders

David Graus, Paul N. Bennett, Ryen W. White, E. Horvitz
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引用次数: 35

Abstract

Automated personal assistants such as Siri, Cortana, and Google Now provide services to help users accomplish tasks, including tools to set reminders. We study how people specify and use reminders. Our study analyzes a sample of six months of logs of user-specified reminders from Cortana (Microsoft's intelligent personal assistant), the first large-scale analysis of such reminders. We focus our analyses on time-based reminders, the most common type of reminder found in the logs. We perform a data-driven analysis to identify common categories of tasks that give rise to these reminders across a large number of users, and we arrange these tasks into a taxonomy. We identify temporal patterns linked to the type of task, time of creation, and terms in the reminder text. Finally, we show that these patterns generalize by addressing a prediction task. Specifically, we show that a reminder's creation time is a strong feature in predicting the notification time, and that including the reminder text further improves prediction accuracy. The results have implications for the design of systems aimed at helping people to complete tasks and to plan future activities.
分析和预测任务提醒
Siri、Cortana和Google Now等自动个人助理提供帮助用户完成任务的服务,包括设置提醒的工具。我们研究人们如何指定和使用提醒。我们的研究分析了来自Cortana(微软的智能个人助理)的六个月的用户指定提醒日志样本,这是对此类提醒的第一次大规模分析。我们将分析重点放在基于时间的提醒上,这是日志中最常见的提醒类型。我们执行数据驱动的分析,以识别在大量用户中产生这些提醒的常见任务类别,并将这些任务安排到一个分类法中。我们识别与任务类型、创建时间和提醒文本中的术语相关的时间模式。最后,我们通过解决预测任务来展示这些模式的泛化。具体来说,我们表明提醒的创建时间是预测通知时间的一个重要特征,包含提醒文本进一步提高了预测的准确性。研究结果对旨在帮助人们完成任务和计划未来活动的系统设计具有启示意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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