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首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >Recommender System Employing Personal-Value-Based User Model
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Recommender System Employing Personal-Value-Based User Model

机译:推荐系统,采用基于个人价值的用户模型

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This paper proposes a recommender system based on personal-value-based user model. Conventional methods such as collaborative and content-based approaches tend to be less accurate for new users and items due to the lack of a relation between items and user preferences. While existing recommender systems usually employ user preferences of items for making recommendations, proposed method focuses on users' personal values, which mean value judgments regarding on which attributes users put a high priority. The proposed recommender system employing personal-value-based user model is thus expected to realize more precise recommendations in cold-start situations. As one of typical cold-start situations, a prototype system is developed for recommendation using external resources. Experimental results show that generated user models reflect each user's value judgment on attributes. In addition, the results also show that recommendation employing the proposed user model realizes improvements of precision in cold-start situations.
机译:本文提出了一种基于个人价值的用户模型推荐系统。由于缺少项目和用户偏好之间的关系,因此诸如协作和基于内容的方法之类的常规方法对于新用户和项目而言准确性较差。现有的推荐系统通常采用用户对项目的偏好来进行推荐,而提出的方法则侧重于用户的个人价值,这意味着对用户将哪些属性置于高度优先的价值判断。因此,期望采用基于个人价值的用户模型的建议的推荐系统在冷启动情况下实现更精确的推荐。作为一种典型的冷启动情况,开发了一个原型系统,以使用外部资源进行推荐。实验结果表明,生成的用户模型反映了每个用户对属性的价值判断。此外,结果还表明,采用建议的用户模型进行推荐可以在冷启动情况下提高精度。

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