基于网络痕迹的群体习惯检测的频繁模式挖掘

Hafzullah Is, A. Müngen, T. Tuncer, Mehmet Kaya
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引用次数: 0

摘要

在过去的10年里,互联网的使用网络以不可预见的速度蔓延。同时,包括官方交易在内的许多服务已经通过互联网获得。顺便说一下,它已经成为一个互联网用户可以访问应用程序并通过社交媒体相互互动的领域。人们的互联网使用习惯已经成为一个领域,可以提供有关人口和他们的兴趣领域的信息。在社交网络中,群体分析和连接预测是许多科学工作的基础。尤指用于;广告定制,习惯和倾向保留或基于相同性格的友谊的决定。网络用户可以根据其活动和特征进行分组,也可以通过估计算法根据其在网络中的运动进行分组。在本研究中,对所有数据集进行过滤,以获得由机构和社区网络中的一部分互联网用户生成的匿名流量日志。根据基于类别的多样性、访问时间段和使用时间段分析所有日志。正如预期的那样,社区是通过“基于模式的频率分析法”从用户的习惯中建立起来的。已定义mac地址并属于已确定组的自愿实验用户,按指定方法重新分配。最后,通过计算正确分布结果的实现情况,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frequent pattern mining for community dedection in web logs group based habit dedection in community using network traces
During last 10 years, internet usage network has spread at an unforeseen rate. Concurrently, many services including official transactions have been granted from the internet. By the way, it has become an area where internet users have access to apps and interact with each other over social media. People's internet usage habits have become a domain that can give information about the areas of the population and their interests. In social networks, group analysis and connection predictions are popular terms that construct base of a lot of scientific works. This terms, especially, used for; ads customize, habits and tendency retain or determination of friendship based on same character. Network users can be grouped according to their activity and character, or they can be grouped according to their movement over the network by their estimation algorithms. In this study, all dataset filtered to get anonymous traffic logs that generated by a part of internet users who are in the network of an institution and the community was explored. All logs analyzed according to Category-based diversity, time periods of accesses and usage periods. As expected, communities were established from the habits of users with “Pattern Based Frequency Analysis Method”. Voluntary experimental users whose mac addresses were already defined and belong to determined groups redistributed with specified method. Lastly, via calculating the achievement of correct distribution results the success of method found out.
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