Review of Algorithms, Frameworks and Implementation of Deep Machine Learning Algorithms

Ivan Leonid
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引用次数: 3

Abstract

Machine Learning (ML) is increasingly being used in intelligent systems that can perform Artificial Intelligence (AI) functions. Analytical model development and solving problems related with it may be automated by machine learning, which explains the ability of computers to learn from problem-specific learning algorithm. Depending on artificial neural networks, "deep learning" is a kind of machine learning. The performance of deep learning techniques is superior to that of superficial machine learning techniques and conventional methods of data analysis in many situations. Deep Machine Learning (DML) algorithms and frameworks that have been implemented to and supported by wireless communication systems have been thoroughly analyzed in this paper. User associations, power latency and allocation; bandwidth assignment and user selections, and; cloud computing technology on the edge have both been suggested as potential DML implementations.
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深度机器学习算法、框架和实现综述
机器学习(ML)越来越多地用于可以执行人工智能(AI)功能的智能系统。分析模型的开发和解决与之相关的问题可以通过机器学习自动化,这解释了计算机从特定问题的学习算法中学习的能力。基于人工神经网络的“深度学习”是机器学习的一种。在许多情况下,深度学习技术的性能优于肤浅的机器学习技术和传统的数据分析方法。本文对无线通信系统支持的深度机器学习(DML)算法和框架进行了深入的分析。用户关联、电力延迟和分配;带宽分配和用户选择;边缘的云计算技术都被认为是潜在的DML实现。
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