Reliability Analysis and Optimization of Computer Communication Network Based on Machine Learning Algorithm

Dai Liu
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Abstract

Machine learning is to find laws from observed data and use these laws to predict future data or unobservable data. Network measurement and routing optimization strategy are critical components in the routing optimization problem. Due to the continuous progress of information technology, computer information technology is widely used in various fields, so its security and reliability will be paid more and more attention. The unsupervised learning classification is carried out through the fast density clustering algorithm to classify the importance of nodes, which can be effectively applied to the important evaluation of communication network nodes and support the planning of the communication network. Given the progress of communication technology, optical fiber technology and computer internet technology, the network's functions have been strengthened daily, and the research on the reliability of computer communication networks has been promoted to develop in depth. Furthermore, optimization theory can realize the bandwidth allocation of a communication network. The important is that computer communication network reliability based on machine learning algorithm has great economic value, social value and social benefit.
基于机器学习算法的计算机通信网络可靠性分析与优化
机器学习就是从观察到的数据中寻找规律,并利用这些规律来预测未来的数据或不可观察到的数据。网络测量和路由优化策略是路由优化问题的关键组成部分。由于信息技术的不断进步,计算机信息技术被广泛应用于各个领域,因此其安全性和可靠性将越来越受到重视。无监督学习分类通过快速密度聚类算法对节点的重要度进行分类,可有效应用于通信网络节点的重要度评估,为通信网络规划提供支持。随着通信技术、光纤技术和计算机互联网技术的进步,网络的功能日益增强,对计算机通信网络可靠性的研究也在不断深入。此外,优化理论可以实现通信网络的带宽分配。重要的是,基于机器学习算法的计算机通信网络可靠性具有巨大的经济价值、社会价值和社会效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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