Machine learning algorithms for data categorization and analysis in communication

Tan Xian
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引用次数: 1

Abstract

Machine learning and pattern recognition contains well-defined algorithms with the help of complex data, provides the accuracy of the traffic levels, heavy traffic hours within a cluster. In this paper the base stations and also the noise levels in the busy hour can be predicted. 348 pruned tree contains 23 nodes with busy traffic hour provided in east Godavari. Signal to noise ratio has been predicted at 55, based on CART results. About 53% instances provided inside the cluster and 47% provided outside the cluster. DBScan clustering provided maximum noise from srikakulam. MOR (Number of originating calls successful) predicted as best associated attribute based on Apriori and Genetic search 12:1 ratio.
通信中数据分类和分析的机器学习算法
机器学习和模式识别在复杂数据的帮助下包含定义良好的算法,提供集群内交通水平,繁忙交通小时的准确性。本文对基站进行了预测,并对繁忙时段的噪声水平进行了预测。Godavari东部提供了348棵修剪过的树,包含23个节点,交通繁忙时间。根据CART结果,信噪比预测为55。大约53%的实例在集群内部提供,47%在集群外部提供。DBScan聚类提供了最大的srikakulam噪声。基于先验和遗传搜索12:1的比例预测MOR(成功发起呼叫数)为最佳关联属性。
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