Research on Model and Algorithm of User Access Pattern Data Mining

Jinfeng Miao, Xuechen Zhao
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引用次数: 1

Abstract

The era of big data has come. Today, all kinds of information and data are showing explosive growth. Internet activities of different scales are struggling to catch up with the pace and pace of the development of "big data. This paper uses time series mining algorithms, and uses Microsoft's data mining tools to model the data sets collected from data halls, so as to discover the user's online behaviour patterns and potential online rules within a certain period of time. we made reasonable suggestions for the scientific management of the campus network. A new clustering method based on the improved Kohonen self-organizing feature mapping neural network is proposed. A Gaussian-shaped membership function has introduced to output several neurons with a degree of membership greater than the threshold, thereby solving the problem of mining users' multiple interests.
用户访问模式数据挖掘模型与算法研究
大数据时代已经到来。今天,各种各样的信息和数据都呈现出爆炸式的增长。不同规模的互联网活动都在努力追赶“大数据”发展的步伐和步伐。本文采用时间序列挖掘算法,并使用微软公司的数据挖掘工具对从数据厅收集的数据集进行建模,从而发现用户在一定时间内的上网行为模式和潜在的上网规则。为校园网的科学管理提出了合理的建议。提出了一种基于改进的Kohonen自组织特征映射神经网络的聚类方法。引入高斯形隶属函数输出多个隶属度大于阈值的神经元,从而解决了用户多重兴趣挖掘问题。
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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