首页> 外文会议>ERCIM Workshop on User Interfaces for All; 20040628-29; Vienna(AT) >Learning Usage Patterns for Personalized Information Access in e-Commerce
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Learning Usage Patterns for Personalized Information Access in e-Commerce

机译:电子商务中个性化信息访问的学习使用模式

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摘要

The World Wide Web is a vast repository of information, much of which is valuable but very often hidden to the user. Currently, Web personalization is the most promising approach to remedy this problem, and Web usage mining, is considered a crucial component of any effective Web personalization system. Web usage mining techniques such as clustering and association rules, which rely on offline pattern discovery from user transactions, can be used to improve searching in the Web. We present the Profile Extractor, a personalization component based on machine learning techniques, which allows for the discovery of preferences and interests of users that have access to a Web site. More specifically, we present the module that exploits unsupervised learning techniques for the creation of communities of users and usage patterns applied to customers of an on-line bookshop. To support our work, we have performed several experiments and discussed the results.
机译:万维网是一个庞大的信息存储库,其中很多都是有价值的,但通常对用户隐藏。当前,Web个性化是解决此问题的最有前途的方法,Web使用挖掘被认为是任何有效Web个性化系统的关键组成部分。依赖于从用户事务中进行脱机模式发现的诸如群集和关联规则之类的Web使用情况挖掘技术可用于改进Web中的搜索。我们介绍了Profile Extractor,它是一种基于机器学习技术的个性化组件,它允许发现有权访问网站的用户的偏好和兴趣。更具体地说,我们介绍了利用无监督学习技术来创建用户社区和应用于在线书店客户的使用模式的模块。为了支持我们的工作,我们进行了几次实验并讨论了结果。

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