个性化的Web推荐:支持关于最终用户的认知信息

M. Preda, D. Popescu
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引用次数: 9

摘要

在线推荐在Web站点世界中很受欢迎,因为它们有可能提高客户的满意度。表达关于客户信念的认知信息的能力对于理解他们的需求很重要。提出了一种基于强化学习的推荐系统。该系统通过认识论逻辑程序表示网站上呈现的概念,并在程序之间使用相似性度量以促进泛化。给出了该系统的样机和实验结果。
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Personalized Web recommendations: supporting epistemic information about end-users
The online recommendations are a popular presence in the Web sites world due to their potential to increase the customers' satisfaction. The ability to represent epistemic information about the clients' beliefs is important to understand their needs. This paper presents a recommender system based on reinforcement learning. The system represents concepts presented on a Web site by epistemic logical programs and uses a similarity measure between programs in order to facilitate generalization. A prototype of this system and experiments are presented.
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