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基于Web挖掘的个性化学习系统 被引量:3

Individualized Learning System Based on Web Mining
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摘要 随着Internet的深入发展和不断的普及,Web已经成为人们获取信息,进行学习的最重要的手段之一。但是,目前Web系统只为所有用户提供相同的服务,而Web用户的需求却千差万别,用户希望Web系统能够根据他们的不同特性提供个性化的服务。普通的学习系统已经不能适应他们的学习,不能体现他们的个性化。因此,根据他们的不同特性开发个性化的学习系统已变得相当重要。 With the in-depth development and continued popularity of the Internet, the Web has become one of the significant methods with which the people access to information and learn. However, the Web system does only provide the same service to all users while the needs of Web users differ in thousands of ways. Web users want Web system to provide them with individual service. The ordinary learning system for the students in schools is no longer suitable to their learning, and no longer reflects their individuality. Therefore, the development of individualized learning system has become very important for the different individual requirements.
作者 于倩
机构地区 滨州职业学院
出处 《通信技术》 2008年第9期232-234,共3页 Communications Technology
关键词 WEB挖掘 WEB日志挖掘 关联规则 聚类 个性化 Web mining Web log mining association rule clustering individualization
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