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Exploiting Semantic Descriptions of Products and User Profiles for Recommender Systems

机译:利用推荐系统的产品和用户配置文件的语义描述

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To enable semantics based recommender systems, products and user profiles need to be represented in knowledge uniformly where ontology can be exploited. Product ontology describes the attributes of the product such as appearance, structure, behavior and function, and has a property "service" which describes the services related to the product supplied by the products provider. So service ontology need to be constructed due to its great influences on users when they browse and purchase products. User profile is modeled as a set of triple where goal is the product a user searches for, constraint indicates the conditions a user prescribes that must be satisfied by the attributes of the goals and preference indicates users'' preferences in specific dimensions of the attributes of the goals. The constraint and preference in product attributes are obtained through mining user''s past browsing behaviors and transaction records. The mining algorithm is given in this paper. The method of implicit rating and weight evaluation of product attributes are also explored in this paper. A hybrid approach combining semantic similarity with collaborative filtering is proposed to generate the recommendation lists for users where the semantic similarity algorithm is adopted to get the nearest neighbors of the active user. The experiment results are presented which demonstrate that our approach is feasible.
机译:为了启用基于语义的推荐器系统,需要在知识中统一表示产品和用户配置文件,以便可以利用本体。产品本体描述产品的属性,例如外观,结构,行为和功能,并具有属性“服务”,该属性描述与产品提供商提供的产品相关的服务。因此,由于服务本体对用户浏览和购买产品的影响很大,因此需要构建服务本体。用户配置文件被建模为一组三元组<目标,约束,偏好>,其中目标是用户搜索的产品,约束指示用户规定的目标属性必须满足的条件,偏好指示用户的偏好在目标属性的特定维度。产品属性的约束和偏好是通过挖掘用户过去的浏览行为和交易记录来获得的。文中给出了挖掘算法。本文还探讨了对产品属性进行隐式评价和权重评价的方法。提出了一种将语义相似度与协同过滤相结合的混合方法,为用户生成推荐列表,其中采用语义相似度算法来获取活动用户的最近邻居。实验结果表明,该方法是可行的。

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