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Applying machine learning techniques for caching in next-generation edge networks: A comprehensive survey

机译:应用机器学习技术在下一代边缘网络中缓存:综合调查

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摘要

Edge networking is a complex and dynamic computing paradigm that aims to push cloud re-sources closer to the end user improving responsiveness and reducing backhaul traffic. User mobility, preferences, and content popularity are the dominant dynamic features of edge networks. Temporal and social features of content, such as the number of views and likes are leveraged to estimate the popularity of content from a global perspective. However, such estimates should not be mapped to an edge network with particular social and geographic characteristics. In next generation edge networks, i.e., 5G and beyond 5G, machine learning techniques can be applied to predict content popularity based on user preferences, cluster users based on similar content interests, and optimize cache placement and replacement strategies provided a set of constraints and predictions about the state of the network. These applications of machine learning can help identify relevant content for an edge network. This article investigates the application of machine learning techniques for in-network caching in edge networks. We survey recent state-of-the-art literature and formulate a comprehensive taxonomy based on (a) machine learning technique (method, objective, and features), (b) caching strategy (policy, location, and replacement), and © edge network (type and delivery strategy). A comparative analysis of the state-of-the-art literature is presented with respect to the parameters identified in the taxonomy. Moreover, we debate research challenges and future directions for optimal caching decisions and the application of machine learning in edge networks.
机译:边缘网络是一个复杂和动态的计算范式,旨在将云重新源较近最终用户提高响应性并减少回程流量。用户移动性,偏好和内容流行度是边缘网络的主导动态功能。内容的时间和社交功能,例如视图和喜欢的数量,可以利用来估计来自全球视角的内容的普及。然而,这种估计不应映射到具有特定社交和地理特征的边缘网络。在下一代边缘网络中,即5G和超过5G,可以应用机器学习技术基于用户偏好,基于类似内容兴趣的群集用户来预测内容流行度,并且优化高速缓存放置和替换策略提供了一组约束和预测关于网络的状态。机器学习的这些应用可以帮助识别边缘网络的相关内容。本文调查了在边缘网络中网络中高速缓存的机器学习技术的应用。我们调查了最近的最先进的文献,并根据(a)机器学习技术(方法,目标和特征),(b)缓存策略(政策,位置和更换)和©边缘,制定综合分类学网络(类型和交付策略)。关于分类中鉴定的参数提出了最先进文献的对比分析。此外,我们辩论研究挑战和未来方向,以获得最佳缓存决策和机器学习在边缘网络中的应用。

著录项

  • 来源
    《Journal of network and computer applications》 |2021年第5期|103005.1-103005.24|共24页
  • 作者单位

    Department of Computer Science COMSATS University Islamabad Abbottabad Campus Pakistan|Department of Computer Engineering Umm Al-Qura University Makkah Saudi Arabia;

    Department of Computer Science COMSATS University Islamabad Abbottabad Campus Pakistan;

    Department of Computer Engineering Umm Al-Qura University Makkah Saudi Arabia;

    College of Computer and Information Systems Umm Al-Qura University Makkah Saudi Arabia;

    Department of Computer Science Umm Al-Qura University Makkah Saudi Arabi;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    5G; Caching; Edge networks; Machine learning; Popularity prediction;

    机译:5G;缓存;边缘网络;机器学习;人气预测;

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