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Clustering-Based Learning Approach for Ant Colony Optimization Model to Simulate Web User Behavior

机译:基于聚类的蚁群优化模型模拟Web用户行为的学习方法

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In this paper we propose a novel methodology for analyzing web user behavior based on session simulation by using an Ant Colony Optimization algorithm which incorporates usage, structure and content data originating from a real web site. In the first place, artificial ants learn from a clustered web user session set through the modification of a text preference vector. Then, trained ants are released through a web graph and the generated artificial sessions are compared with real usage. The main result is that the proposed model explains approximately 80% of real usage in terms of a predefined similarity measure.
机译:在本文中,我们提出了一种新的方法,用于通过使用ant菌落优化算法来分析基于会话仿真的Web用户行为,该蚁群优化算法包括源自真实网站的使用,结构和内容数据。首先,人工蚂蚁从群集的Web用户会话中学习通过文本偏好向量的修改来设置。然后,培训的蚂蚁通过腹板图释放,并将所产生的人工会话与真实用途进行比较。主要结果是,所提出的模型在预定义的相似度测量方面解释了大约80%的真实用量。

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