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How do I block Internet notifications on my Chromebook? 

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All in all, quarantining appears more effective than other notification and remediation mechanisms, but it is also clear that it can not be deployed as a general solution for Internet-wide notifications.
Proceedings ArticleDOI
Alexandra Voit, Dominik Weber, Niels Henze 
08 Oct 2018
13 Citations
Our results show that users developed strategies to deal with notifications on their devices such as disabling (or not enabling) notifications, uninstalling applications, using do-not-disturb functionality, muting devices or even putting devices away.
Disregarding the type or content of notifications, we found that the smartphone is the preferred device on which to be notified.
We showcase how usage traits of these groups highlight the requirement for notification filtering approaches, e. g., when specific users habitually neglect to manually filter out unimportant notifications.
Open accessBook ChapterDOI
M. Möller, S. Tretter, Barbara Fink 
01 Jan 1995
11 Citations
Our concept of intelligent filtering allows for a highly flexible correlation of several notifications: Secondary notifications can be suppressed or a number of notifications can be aggregated.
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.
This paper proposes a notification management framework which aims to contextually deliver notifications at the peak opportune time of users, thus relieving them of distractions caused by contextually irrelevant notifications.
We present experimental results that show how intelligent filtering mechanisms can save network bandwidth inside the infrastructure and at mobile clients while preserving the accuracy of client notifications.
Proceedings ArticleDOI
01 May 2017
13 Citations
In addition, we develop a notification manager that includes a machine learning based prediction model and that shows only the important notifications and delays the unimportant notifications.
Proceedings ArticleDOI
13 Jul 2008
8 Citations
This system also solves some of the issues facing utilizing public information available on the Internet to build the needed notifications.

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