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Web Personalization based on Usage Mining

机译:基于使用挖掘的网络个性化

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摘要

Personalized or recommender systems are a particular type of information filtering applications. User profiles, representing the information needs and preferences of users, can be inferred from log or clickthrough data, or the ratings that users provide on information items, through their interactions with a system. Such user profiles have been used, for example in iGoogle, to provide personalized recommendations to the users. A user model is a representation of this profile, which can be obtained implicitly through the application of web usage mining techniques. Our work aims to develop Web usage mining tasks to model an intranet or local Web site recommender system. We will focus on the users activity on a university Web site, to customize the contents and structure the presentation of a Web site according to the preferences derived from the user's activity. The customization is based on an individual's user profile as well as a profile representing the collective interest of the entire user community, in this case all users accessing the Web site. The outcome will be personalized recommendations and presentation of a Web site with respect to the user's needs.
机译:个性化或推荐系统是一种特定类型的信息过滤应用程序。用户配置文件,代表用户的信息需求和偏好,可以从日志或点击数据中推断,或者通过与系统的交互提供用户提供的额定值。已经使用了这样的用户配置文件,例如在iGoogle中,向用户提供个性化建议。用户模型是此配置文件的表示,其可以通过应用Web使用挖掘技术来隐含地获得。我们的工作旨在开发Web使用挖掘任务以模拟Intranet或本地网站推荐系统。我们将专注于大学网站上的用户活动,根据来自用户活动派生的首选项,自定义内容和结构的网站演示。自定义基于个人的用户简档以及表示整个用户社区的集体兴趣的配置文件,在这种情况下,所有访问网站的用户。结果将是关于用户需求的个性化建议和网站展示。

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