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Hybrid Data Aggregation Technique to Categorize the Web Users to Discover Knowledge About the Web Users

机译:混合数据聚合技术将Web用户分类以发现有关Web用户的知识

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摘要

Web usage mining is a knowledge discovery technique where a data analyst can discover useful information from the web users' data. Web contains billions of web pages. The web access behaviour of one web user differs from that of another and also it changes with respect to their temporal property. By analyzing the users' data, the web administrator can personalize the web pages according to individual web users' interest. Personalizing the web page gives various advantages in this fast era such as low search time, less data transfer, higher availability of data, lower bandwidth traffic, targeted advertisement and identifying the threaded web users and high web users satisfaction. Due to the above advantages, it is very much essential in the present World Wide Web. Various algorithms, techniques and tools are available in the field of web usage mining. Although there are various techniques, algorithms and tools developed related to web usage mining, new techniques are required to make the discovery of knowledge more accurate. In this paper, a novel technique is proposed by using various methods such as web log, web ranking, web rating and web review based method to identify the success rate of various web pages and summarize the value to identify the accurate success rate of each web page. The success rate is normalized and aggregated into three categories for personalizing the web user. Personalizing the web user based on grouping relevant web access behaviour reduces the calculation complexity. It is very effective in very large websites. This technique is very much effective for analyzing the outreach of web advertisement to the web users.
机译:Web使用挖掘是一种知识发现技术,数据分析师可以从网络用户数据发现有用的信息。 Web包含数十亿个网页。一个Web用户的Web访问行为与另一个Web用户的访问行为不同,并且它也会对其时间属性的变化。通过分析用户数据,Web管理员可以根据个人网络用户的兴趣来个性化网页。个性化网页在这种快速时代提供了各种优势,例如低搜索时间,更少的数据传输,更高的数据可用性,较低的带宽流量,目标广告以及识别线程Web用户和高网波用户满意度。由于上述优势,在本世界宽的网络中非常重要。 Web使用挖掘领域提供了各种算法,技术和工具。虽然有各种技术,但与Web使用挖掘相关的算法和工具,需要进行新技术来发现知识更准确。在本文中,通过使用Web日志,Web排名,网络评级等各种方法提出了一种新颖的技术,以识别各种网页的成功率并总结了识别每个Web的准确成功率的值页。成功率是标准化的,并汇总为三类,用于个性化Web用户。基于分组相关的Web访问行为来个性化Web用户降低了计算复杂性。它在非常大的网站中非常有效。这种技术非常有效地分析对网络用户的Web广告的外展。

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