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An in-the-wild and synthetic mobile notification dataset evaluation

机译:野外综合移动通知数据集评估

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Managing the vast amounts of information being pushed at mobile users is a challenge that is becoming increasingly difficult as the number of connected devices and users continues to expand. In order to overcome this challenge, a Notification Management System (NMS), needs a number of detailed data resources in order to decide what to do with an incoming notification in-the-wild. Explicit data contained within the notification and contextual information regarding the user and immediate environment are both necessary in order for a system to accurately infer a user's preferred delivery time for a given notification. Due to the sensitive nature of notifications and contextual data, it is difficult to acquire the explicit notification datasets which sufficiently describe the incoming notifications as well as the current contextual states of the user. This poses a problem for prospective research in the domain of Notification Management as arduous and time-consuming data collection is necessary if a hypothesis depends on unique notification/user features not previously collected. Without a number of rich notification datasets, either experimentation is limited to synthetic, vague or incomplete data, or time must be invested in developing a system to capture the required features. This paper evaluates a notification dataset previously collected in-the-wild and subsequently used in an evaluation of a NMS. The necessary features of the collected dataset are outlined as well as its limitations. As a comparison, the process of creating a synthetic notification dataset derived from a mobile usage study carried out by the MIT Media lab is also evaluated. The synthetic dataset is henceforth used to optimize a previous set of knowledge base rules and membership functions used within the Fuzzy Inference System (FIS) of an NMS. The resulting optimized rules can be presented to the user as a means of throttling notifications based on their goals.
机译:管理连接到移动用户的大量信息是一个挑战,随着连接设备和用户数量的不断增长,这一挑战变得越来越困难。为了克服这一挑战,通知管理系统(NMS)需要大量详细的数据资源,以便决定如何处理传入的通知。通知中包含的显式数据以及与用户和当前环境有关的上下文信息都是必需的,以便系统准确地推断给定通知的用户首选交付时间。由于通知和上下文数据的敏感性质,很难获取足够描述传入的通知以及用户当前上下文状态的显式通知数据集。这给通知管理领域的前瞻性研究带来了问题,因为如果假设依赖于先前未收集的唯一通知/用户功能,则艰巨而费时的数据收集是必需的。如果没有大量丰富的通知数据集,则要么将实验局限于合成,模糊或不完整的数据,要么必须花费时间来开发系统以捕获所需的功能。本文评估了以前在野外收集并随后用于NMS评估的通知数据集。概述了收集的数据集的必要功能及其局限性。作为比较,还评估了创建自MIT媒体实验室进行的移动使用情况研究得出的综合通知数据集的过程。此后,将综合数据集用于优化NMS的模糊推理系统(FIS)中使用的先前的知识库规则和隶属函数集。可以将生成的优化规则呈现给用户,作为基于其目标限制通知的一种方式。

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