HiNextApp:移动系统中应用预测的上下文感知和自适应框架

Chaoneng Xiang, Duo Liu, Shiming Li, Xiao Zhu, Yang Li, Jinting Ren, Liang Liang
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引用次数: 11

摘要

智能手机等移动系统上安装的各种应用程序(App)丰富了我们的生活,但也增加了系统管理的难度。例如,由于智能手机上安装了更多的应用程序,查找特定的应用程序变得更加不方便,并且由于更多,更大的应用程序和有限的内存容量之间的差距,应用程序响应时间可能会变得更长。最近的工作提出了几种预测未来使用的应用程序的方法(这里是after appprediction)来解决这个问题,但面临着预测精度低和训练成本高的问题。特别是将App预测应用于内存管理(如LMK)和App预发布,对预测精度和训练成本有很高的要求。在本文中,我们提出了一个名为HiNextApp的应用程序预测框架,以提高移动系统中应用程序的预测精度并降低训练成本。HiNextApp基于上下文信息,可以自适应调整预测周期的大小。该框架主要由非均匀贝叶斯模型和弹性算法两部分组成。实验结果表明,HiNextApp能够有效提高预测精度,减少训练次数。此外,与传统的贝叶斯模型相比,我们的框架的开销相对较低。
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HiNextApp: A Context-Aware and Adaptive Framework for App Prediction in Mobile Systems
A variety of applications (App) installed on mobile systems such as smartphones enrich our lives, but make it more difficult to the system management. For example, finding the specific Apps becomes more inconvenient due to more Apps installed on smartphones, and App response time could become longer because of the gap between more, larger Apps and limited memory capacity. Recent work has proposed several methods of predicting next used Apps (here in after appprediction) to solve the issues, but faces the problems of the low prediction accuracy and high training costs. Especially, applying app-prediction to memory management (such as LMK) and App prelaunching has high requirements for the prediction accuracy and training costs. In this paper, we propose an app-prediction framework, named HiNextApp, to improve the app-prediction accuracy and reduce training costs in mobile systems. HiNextApp is based on contextual information, and can adjust the size of prediction periods adaptively. The framework mainly consists of two parts: non-uniform bayes model and an elastic algorithm. The experimental results show that HiNextApp can effectively improve the prediction accuracy and reduce training times. Besides, compared with traditional bayes model, the overhead of our framework is relatively low.
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