基于Web使用挖掘的Web用户访问特征分析混合预测模型

V. Rao, V. Kumari
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引用次数: 9

摘要

网络已经成为世界上最大的知识库。Web使用挖掘的重点是从用户的浏览模式中发现潜在的知识,并找到页面之间的相关性。随着网络日志的指数级增长,传统的数据挖掘技术被证明是低效的。由于网络日志本质上是增量的,因此准确预测用户浏览网站的方式就成为一个至关重要的问题。利用预测挖掘技术提取用户的使用模式,研究用户的访问特征,是网络挖掘的必要手段。由于web日志上的数据具有异构性和不可扩展性,因此为了减少操作范围和显著提高准确度精度,需要改进混合模型。本文将马尔可夫模型与贝叶斯定理相结合,提出了一种高效的混合预测模型。这种两阶段预测模型使网络挖掘器能够识别和分析网络用户的导航模式。在该模型中,马尔可夫模型通过过滤可能的类别来减少操作范围,贝叶斯定理提高了在识别类别中预测网页的准确性。为了验证所提出的预测模型,本文进行了多次实验,结果证明了这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Hybrid Predictive Model to Analyze the Visiting Characteristics of Web User Using Web Usage Mining
The Web has become the world's largest knowledge repository. Web usage mining focuses on discovering the potential knowledge from the browsing patterns of users and to find the correlation between the pages. With exponential growth of web log, the conventional data mining techniques were proved to be inefficient. As web log is incremental in nature, it becomes a crucial issue to predict exactly the ways how users browse websites. It is necessary for web miners to use predictive mining techniques to extract the usage patterns and study the visiting characteristics of user. The data on the web log is heterogeneous and non scalable, hence to reduce the operation scope and increase the accuracy precision significantly an improved hybrid model is required. This paper introduces an efficient hybrid predictive model, which is a combination of Markov model and Bayesian theorem. This two stage predictive model to enables the web miner to identify and analyze web user navigation patterns. In this model, the Markov model helps to reduce the operations scope by filtering possible categories and Bayesian theorem improves accuracy in predicting the web pages in identified category. To validate the proposed prediction model, several experiments were conducted and results proven this are claimed in this paper.
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