REXWERE: WEb推荐中的模糊规则提取工具

G. Castellano, A. Fanelli, M. Torsello
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引用次数: 2

摘要

在本文中,我们提出了REXWERE,一个设计和实现的软件工具,以推荐模糊规则的形式从Web使用数据中提取知识,从而为网站访问者提供个性化的链接建议。REXWERE采用了一种混合方法,在由几个步骤组成的工作方案中结合了模糊推理和神经学习。首先,采用模糊聚类方法将相似的用户会话分组到用户配置文件中;其次,利用用户档案信息训练神经模糊网络,以导出一组推荐模糊规则。最后,进行进一步的学习步骤,以提高导出的推荐模型的准确性。在REXWERE的整个使用过程中,用户由由一系列面板组成的基于向导的界面引导。每个面板都包含一个图形窗口,提供工具的基本功能。给出了一个示例来说明REXWERE的使用,并演示了它在寻找好的推荐规则方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
REXWERE: A tool for fuzzy Rule EXtraction in WEb REcommendation
In this paper, we present REXWERE, a software tool designed and implemented in order to extract knowledge from Web usage data in the form of recommendation fuzzy rules useful to provide personalized link suggestions to the visitor of a Web site. REXWERE employs a hybrid approach that combines fuzzy reasoning and neural learning within a working scheme made of several steps. Firstly, a fuzzy clustering process is applied to group similar user sessions into user profiles. Next, a neuro-fuzzy network is trained using information about user profiles in order to derive a set of recommendation fuzzy rules. Finally, a further learning step is performed to improve the accuracy of the derived recommendation model. Throughout the use of REXWERE, the user is guided by a wizard-based interface made of a sequence of panels. Each panel consists in a graphical window providing a basic function of the tool. An illustrative example is provided to show the use of REXWERE and to demonstrate its effectiveness in finding good recommendation rules.
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