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CAMeL: A Self-Adaptive Framework for Enriching Context-Aware Middlewares with Machine Learning Capabilities

机译:CAMeL:自适应框架,用于丰富具有机器学习功能的上下文感知中间件

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摘要

Context-aware middlewares support applications with context management. Current middlewares support both hardware and software sensors providing data in structured forms (e.g., temperature, wind, and smoke sensors). Nevertheless, recent advances in machine learning paved the way for acquiring context from information-rich, loosely structured data such as audio or video signals. This paper describes a framework (CAMeL) enriching context-aware middlewares with machine learning capabilities. The framework is focused on acquiring contextual information from sensors providing loosely structured data without the need for developers of implementing dedicated application code or making use of external libraries. Nevertheless the general goal of context-aware middlewares is to make applications more dynamic and adaptive, and the proposed framework itself can be programmed for dynamically selecting sensors and machine learning algorithms on a contextual basis. We show with experiments and case studies how the CAMeL framework can (i) promote code reuse and reduce the complexity of context-aware applications by natively supporting machine learning capabilities and (ii) self-adapt using the acquired context allowing improvements in classification accuracy while reducing energy consumption on mobile platforms.
机译:上下文感知中间件通过上下文管理支持应用程序。当前的中间件支持以结构化形式提供数据的硬件和软件传感器(例如,温度,风和烟传感器)。然而,机器学习的最新进展为从信息丰富,结构松散的数据(例如音频或视频信号)中获取上下文铺平了道路。本文介绍了一种框架(CAMeL),该框架丰富了具有机器学习功能的上下文感知中间件。该框架专注于从提供宽松结构数据的传感器获取上下文信息,而无需开发人员实现专用的应用程序代码或使用外部库。尽管如此,上下文感知中间件的总体目标是使应用程序更具动态性和适应性,并且可以对提出的框架本身进行编程,以便在上下文的基础上动态选择传感器和机器学习算法。我们通过实验和案例研究来展示CAMeL框架如何(i)通过本地支持机器学习功能来促进代码重用并降低上下文感知应用程序的复杂性,以及(ii)使用获取的上下文进行自适应,从而提高分类精度,同时减少移动平台上的能耗。

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  • 来源
    《Mobile Information Systems》 |2019年第1期|1209850.1-1209850.15|共15页
  • 作者单位

    Univ Modena & Reggio Emilia Dept Engn Enzo Ferrari Via Vivarelli 10 I-41125 Modena Italy;

    Univ Modena & Reggio Emilia Dept Sci & Metodi Ingn Viale Amendola 2 Reggio Emilia Italy;

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