预测移动设备状态的递归神经网络

Q1 Computer Science
J. Rodriguez, Alejandro Zunino, Antonela Tommasel, C. Mateos
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引用次数: 2

摘要

如今,移动设备在现代生活中无处不在,因为它们允许用户执行几乎任何任务,从检查电子邮件到玩视频游戏。然而,这些操作中的许多都受到移动设备状态的制约。因此,了解移动设备的当前状态并预测其未来状态是不同领域(例如上下文感知应用程序或ad-hoc网络)的关键问题。一些作者建议使用不同的机器学习方法来预测移动设备未来状态的某些方面。本章的目的是预测移动设备的电池电量,是否接通空调,屏幕和WiFi的状态。为了实现这一目标,移动设备的当前状态可以被视为先前状态序列的结果,这意味着未来的状态可以通过已知的先前状态来预测。本章的重点是使用递归神经网络来预测未来的状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recurrent Neural Networks for Predicting Mobile Device State
Nowadays, mobile devices are ubiquitous in modern life as they allow users to perform virtually any task, from checking e-mails to playing video games. However, many of these operations are conditioned by the state of mobile devices. Therefore, knowing the current state of mobile devices and predicting their future states is a crucial issue in different domains, such as context-aware applications or ad-hoc networking. Several authors have proposed to use different machine learning methods for predicting some aspect of mobile devices' future states. This chapter aims at predicting mobile devices' battery charge, whether it is plugged to A/C, and screen and WiFi state. To fulfil this goal, the current state of a mobile device can be regarded as the consequence of the previous sequence of states, meaning that future states can be predicted by known previous ones. This chapter focuses on using recurrent neural networks for predicting future states.
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来源期刊
Foundations and Trends in Human-Computer Interaction
Foundations and Trends in Human-Computer Interaction Computer Science-Computer Science Applications
CiteScore
10.10
自引率
0.00%
发文量
2
期刊介绍: Foundations and Trends® in Human-Computer Interaction publishes surveys and tutorials in the following topics: - History of the research community - Design and Evaluation - Theory - Technology - Computer Supported Cooperative Work - Interdisciplinary influence - Advanced topics and trends - Information visualization
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