Computer Science, Mathematics Department, Faculty of Science, AinShams University, Cairo, Egypt.
Pure Math. & Computer Science, Menoufia University, Menoufia, Egypt.
J Adv Res. 2016 Mar;7(2):285-95. doi: 10.1016/j.jare.2015.06.005. Epub 2015 Jul 6.
Characterization of user activities is an important issue in the design and maintenance of websites. Server weblog files have abundant information about the user's current interests. This information can be mined and analyzed therefore the administrators may be able to guide the users in their browsing activity so they may obtain relevant information in a shorter span of time to obtain user satisfaction. Web-based technology facilitates the creation of personally meaningful and socially useful knowledge through supportive interactions, communication and collaboration among educators, learners and information. This paper suggests a new methodology based on learning techniques for a Web-based Multiagent-based application to discover the hidden patterns in the user's visited links. It presents a new approach that involves unsupervised, reinforcement learning, and cooperation between agents. It is utilized to discover patterns that represent the user's profiles in a sample website into specific categories of materials using significance percentages. These profiles are used to make recommendations of interesting links and categories to the user. The experimental results of the approach showed successful user pattern recognition, and cooperative learning among agents to obtain user profiles. It indicates that combining different learning algorithms is capable of improving user satisfaction indicated by the percentage of precision, recall, the progressive category weight and F 1-measure.
用户活动的特征描述是网站设计和维护中的一个重要问题。服务器日志文件包含了大量关于用户当前兴趣的信息。这些信息可以被挖掘和分析,因此管理员可以引导用户浏览活动,以便他们在更短的时间内获得相关信息,从而提高用户满意度。基于 Web 的技术通过教育者、学习者和信息之间的支持性交互、交流和协作,促进了个人有意义和对社会有用的知识的创造。本文提出了一种基于学习技术的新方法,用于基于 Web 的多智能体应用程序,以发现用户访问链接中的隐藏模式。它提出了一种新的方法,涉及无监督学习、强化学习和代理之间的合作。它用于发现代表用户在示例网站中特定材料类别配置文件的模式,使用显著百分比。这些配置文件用于向用户推荐有趣的链接和类别。该方法的实验结果表明,用户模式识别和代理之间的合作学习是成功的,以获得用户配置文件。这表明结合不同的学习算法可以提高用户满意度,精度、召回率、渐进类别权重和 F1 度量的百分比表示。