机器学习和深度学习技术的兴起:智能无线网络优化中的寻址

Kaleab Hailemariam, Gurpreet Singh, Mariam Khamis Madata, Amemou Franck Elyse Yao, Jaspreet Singh
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引用次数: 0

摘要

无线网络已经成长为现代生活中必不可少的组成部分,这是无线技术在过去十年中蓬勃发展的结果。机器学习(ML)的基础科学侧重于鼓励计算机行动,而不是额外的编程。在过去的十年里,机器学习一直在帮助我们开发自动运输系统、可用的语音检测、有效的网络搜索,以及对人类遗传密码的更大认识。深度学习(DL)是一项突破性的技术,它使自动和自给自足的管理网络成为可能。将深度学习创意整合到无线网络中有可能帮助即时提高系统的效率,并取代目前需要工程师手动执行的策略,通常需要执行以下密集的网络管理任务。本文通过仔细回顾最近在利用深度学习解决无线网络优化挑战方面的尝试,对基于机器学习的方法与传统的基于建模的策略相比的优越性有了一个基本的理解。在发现比较和困难的同时,也凸显了完全实现机器学习在无线网络优化中的可能性的基础研究困难,包括一些前瞻性的研究领域。最后,对机器学习和深度学习在学习方面进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emerging of Machine Learning and Deep Learning Technology: Addressing in Intelligent Wireless Network Optimization
Wireless networks have grown into an essential component of modern life as a result of the proliferation of wireless technology over what has been a decade. The science underlying machine learning (ML) focuses on encouraging computers to act rather than additional programming. Throughout the prior ten years, machine learning has been helping us develop autonomous transportation systems, usable speech detection, effective web searches, and a much greater awareness of the genetic code of people. Deep learning (DL) is a breakthrough technology that makes automatically and self-sufficient managing networks possible. Incorporating DL creativity into wireless networks has the possibility of helping improve the efficiency of systems in instantaneously as well as replace the manually performed strategies currently required in engineers typically do the following-intensive network management obligations. This paper presents an essential understanding of during which exactly the superiority of ML based approach originates from compared to the traditional modeling based strategies by carefully reviewing recent attempts in employing DL for addressing wireless network optimization challenges. Along with discovering comparisons and difficulties, the fundamental research difficulties including a few prospective research areas for completely realizing the possibility of ML in wireless network optimization have also been highlighted. At last, learning-related comparisons between machine learning as well as deep learning are made.
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