mMTC系统K均值聚类算法性能分析

Haesik Kim
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引用次数: 3

摘要

在5G时代,由于高容量的网络系统,我们每天都会产生大量的数据。为了处理大数据和海量连接,许多研究小组开始关注机器学习算法。mMTC系统是5G的关键应用之一。它需要大量的连接。聚类是mMTC系统设计的关键研究挑战之一。K-means聚类算法是最简单的无监督机器学习算法之一。该算法的目的是通过迭代最小化组的聚类中心与给定观测值之间的度量来找到数据中的聚类。本文将K均值聚类算法应用于mMTC聚类问题。提出了mMTC设备聚类的新指标。在给定的仿真配置下,对其性能进行了研究和分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of K Means Clustering Algorithms for mMTC Systems
In 5G, we generate a huge amount of data everyday due to high capacity network systems. Many research groups paid attention to machine learning algorithms in order to deal with big data and massive connection. The mMTC systems are one of key 5G applications. It requires massive connection. Clustering is one of key research challenges to design mMTC systems. K-means clustering algorithm is one of the simplest unsupervised machine learning algorithms. The purpose of this algorithm is to find a cluster in data by iteratively minimizing the measure between the cluster centre of the group and the given observation. In this paper, K means clustering algorithms are applied for mMTC clustering problem. New metrics for clustering mMTC devices are proposed. Their performances are investigated and analyzed under the given simulation configuration.
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