A New Approach for on Line Recommender System in Web Usage Mining

S. Shinde, U. Kulkarni
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引用次数: 32

Abstract

The Internet is one of the fastest growing areas of intelligence gathering. During their navigation Web users leave many records of their activity. This huge amount of data can be a useful source of knowledge. Sophisticated mining processes are needed for this knowledge to be extracted, understood and used. Web Usage Mining (WUM) systems are specifically designed to carry out this task by analyzing the data representing usage data about a particular Web Site. WUM can model user behavior and, therefore, to forecast their future movements. Online prediction is one Web usage mining application. However, the accuracy of the prediction and classification in the current architecture of predicting userspsila future requests systems can not still satisfy users especially in huge Web sites. To provide online prediction efficiently, we develop architecture for online recommendation for predicting in Web Usage Mining System .In this paper we propose architecture of on line recommendation in Web usage mining (OLRWMS) for enhancing accuracy of classification by interaction between classifications, evaluation, and current user activates and user profile in online phase of this architecture.
Web使用挖掘中在线推荐系统的新方法
互联网是发展最快的情报收集领域之一。在他们的导航过程中,Web用户留下了许多他们的活动记录。大量的数据可以成为有用的知识来源。要提取、理解和使用这些知识,需要复杂的挖掘过程。Web使用挖掘(Web Usage Mining, WUM)系统是专门为通过分析代表特定Web站点使用数据的数据来执行此任务而设计的。WUM可以对用户行为进行建模,从而预测他们未来的行动。在线预测是一种Web使用挖掘应用程序。然而,在当前预测用户和未来请求系统的体系结构中,预测和分类的准确性仍然不能满足用户,特别是在大型网站中。为了有效地提供在线预测,我们开发了Web使用情况挖掘系统的在线推荐预测体系结构。本文提出了在线推荐Web使用情况挖掘体系结构(OLRWMS),通过在线阶段的分类、评价、当前用户活动和用户档案之间的交互来提高分类的准确性。
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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