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A Cold-Start Recommendation Algorithm Based on New User's Implicit Information and Multi-attribute Rating Matrix

机译:一种基于新用户隐式信息和多属性额定矩阵的冷启动推荐算法

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Traditional collaborative filtering recommendation algorithms face the cold-start problem. A collaborative filtering recommendation algorithm based on the implicit information of the new users and multi-attribute rating matrix is proposed to solve the problem. The implicit information of the new users is collected as the first-hand interest information. It is combined with other rating information to create a User-Item Rating Matrix (UIRM). Singular Value Decomposition is used to reduce the dimensionality of the UIRM, resulting in the initial neighbor set for target users and a new user-item rating matrix. The user ratings are mapped to the relevant item attributes and the user attributes respectively to generate a User-Item Attribute Rating Matrix and a User Attribute-Item Attribute Rating Matrix (UAIARM). The attributes of new items and UAIARM are matched to find the N users with the highest match degrees as the target of the new items. The attributes of the new users are matched with UAIARM to find the N items with the highest match degrees as the recommended items. Experiment results validate the feasibility of the algorithm.
机译:传统的协同过滤推荐算法面临冷启动问题。提出了一种基于新用户的隐式信息和多属性评级矩阵的协作过滤推荐算法来解决问题。将新用户的隐式信息作为第一手兴趣信息收集。它与其他评级信息组合以创建用户项目评级矩阵(UIRM)。奇异值分解用于降低多核的维度,从而导致目标用户的初始邻居设置和新的用户项评级矩阵。用户额定额分别被映射到相关的项目属性和用户属性以生成用户项属性额定矩阵和用户属性 - 项目属性评级矩阵(UAIARM)。新项目和UAIARM的属性匹配以查找具有最高匹配度的N个用户作为新项目的目标。新用户的属性与UAIARM匹配,以找到具有最高匹配度的N项作为推荐的项目。实验结果验证了算法的可行性。

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