The Realization of Key Algorithm of Mobile Internet Traffic Information Mining Based on Cloud Computing

Xiaobo Li
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Abstract

With the continuous popularization of mobile Internet, today’s society has entered the information age in an allround way. All kinds of data and information are popping up and flooding people’s lives. To better manage this data and find the content you need in an information explosion environment, you need to apply cloud computing technology. Based on cloud computing and mobile Internet technology, this paper adopts the method of data mining, according to the characteristics of public opinion analysis system, and combines serial K-NN algorithm to design the parallel K-NN algorithm with the following ideas. Experimental data show that the content in the text library is filtered and contains the text of the crawling web page. The experimental results show that, in order to test the performance of k-NN algorithm, three test samples are constructed in this experiment, with the sample sizes of 5G, 10G and 15G respectively, and the information training sets of 2000 and 3000 respectively. In 5000, 6000; for 8000 and 10000 samples, the time cost of training is compared with the time cost of traditional serial mode. In view of the current mobile Internet information presents the characteristics of large data volume, complex data structure and diverse data content, in order to carry out information mining, the basic process of information mining should be clarified first, and then the corresponding mining technology should be used to realize effective information mining.
基于云计算的移动互联网流量信息挖掘关键算法的实现
随着移动互联网的不断普及,当今社会已经全面进入了信息化时代。各种各样的数据和信息层出不穷,充斥着人们的生活。为了更好地管理这些数据并在信息爆炸的环境中找到所需的内容,您需要应用云计算技术。本文基于云计算和移动互联网技术,采用数据挖掘的方法,根据舆情分析系统的特点,结合串行K-NN算法设计并行K-NN算法,思路如下:实验数据表明,文本库中的内容经过了过滤,并包含了爬行网页的文本。实验结果表明,为了测试k-NN算法的性能,本实验构建了三个测试样本,样本量分别为5G、10G和15G,信息训练集分别为2000和3000。5000年,6000年;对于8000和10000个样本,将训练时间成本与传统串行模式的时间成本进行比较。针对当前移动互联网信息呈现出数据量大、数据结构复杂、数据内容多样的特点,要进行信息挖掘,首先要明确信息挖掘的基本流程,然后采用相应的挖掘技术,实现有效的信息挖掘。
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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