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Real-world large-scale study on adaptive notification scheduling on smartphones

机译:关于智能手机的自适应通知的现实大规模研究

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Human attention has bottlenecked today's ubiquitous computing environment where users are consuming increasing amounts of information from numerous applications and services. Since the system-to-user provision of information is becoming more proactive, mainly via push notifications that often cause interruption at the users' side, attention management is becoming very important. Despite the many existing studies concerned with detecting opportune moments to present such push information to the users (in a way that preserves the user's attention and lowers their cognitive load and frustration), there is little evaluation of such systems in the real-world production environments. Overlooked areas of study also include the examination of real users and notification contents. In this paper, we present various results from the first extensive evaluation on user's interruptibility and engagement in the real-world environment with a market-leading smartphone application that boasts a large number of users, including real notification content on the application. Following our previous mobile-sensing and machine learning-based interruptibility estimation approach, which was an effective study in its own right (Okoshi et al., 2015 [18,19]), we embedded a logic with the same approach in the "Yahoo! JAPAN'' Android app (one of the most popular applications on the national market). The results from our large-scale in-the-wild user study (that included more than 680,000 users and spanned three weeks) indicate that, in most cases, delaying the notification delivery until an interruptible moment is detected is beneficial to users. The practice results in significant reduction of user response time (49.7%) when compared to delivering the notifications immediately. We observed a higher number of notifications opened in our system and constant improvement in user engagement levels throughout the entire study period. We also observed differences in click rates among different days and time among users with different attributes (e.g., age, gender, and occupation). Additional evaluation of our revised system, which can train and distribute different models for weekdays and weekends, improved the click rates during weekends. This negated the performance degradation previously observed during weekends. (C) 2018 Elsevier B.V. All rights reserved.
机译:人类的注意力有瓶颈,今天的普遍存在的计算环境,用户在众多应用和服务中消耗越来越多的信息。由于系统到用户提供信息越来越主动,主要通过推送通知经常导致用户方面的中断,注意管理变得非常重要。尽管有许多有关的研究涉及检测到用户的适当时刻,但以一种保护此类推送信息(以一种保留用户注意力和降低其认知负载和挫折),但对现实世界生产环境中的这种系统几乎没有评估。忽视的学习领域还包括考察真实用户和通知内容。在本文中,我们通过市场领先的智能手机应用程序提供了对用户中断和参与的第一次广泛评估的各种结果,这些应用程序领先的智能手机应用程序拥有大量用户,包括应用程序上的真实通知内容。遵循我们以前的移动感应和基于机器学习的中断估算方法,这是一个有效的研究,它是一个有效的研究(Okoshi等,2015 [18,19]),我们嵌入了一个具有相同方法的逻辑在“雅虎” !日本的Android应用程序(国家市场上最受欢迎的应用程序之一)。我们大规模的野外用户学习的结果(包括超过680,000名用户,并跨越三周)表明,最多案件,延迟检测到中断时刻直到用户的通知递送是有益的。与立即交付通知相比,该实践导致用户响应时间(49.7%)的显着降低。我们在我们的系统中观察了更高数量的通知在整个研究期间的用户参与水平不断提高。我们还观察到不同日复日和时间之间的点击率的差异(例如,年龄,性别和occu pation)。额外评估我们修订的系统,可以在周末和周末培训和分发不同的模型,在周末改善点击率。这否定了周末之前观察到的性能下降。 (c)2018 Elsevier B.v.保留所有权利。

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