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Application of Multi-Attribute Rating Matrix in Cold-start Recommendation

机译:多属性评级矩阵在冷启动推荐中的应用

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this recommendation algorithm based on User-Item Rating Matrix is inefficient in the case of cold-start. The Application of Multi-Attribute Rating Matrix (MARM) can solve the problem effectively. The user and item information are analyzed to create their attribute-tables. The user's ratings are mapped to the relevant item attributes and the user's attributes respectively to generate a User Attribute-Item Attribute Rating Matrix (UAIARM). After UAIARM is simplified, MARM will be created. When a new item/user enters into this system, the attributes of new item/user and MARM are matched to find the N users/item with the highest match degrees as the target of the new items or the recommended items. Experiment results validate the cold-start recommendation algorithm based on MARM is efficient.
机译:在冷启动的情况下,基于用户项目评级矩阵的本推荐算法效率低。多属性评级矩阵(MARM)的应用可以有效地解决问题。分析用户和项目信息以创建其属性表。用户的额定额分别映射到相关项目属性和用户的属性以生成用户属性-Tem属性额定矩阵(UAIARM)。在UAIARM被简化之后,将创建MARM。当新项目/用户进入此系统时,匹配新项目/用户和MARM的属性以查找具有最高匹配度的N个用户/项目作为新项目的目标或推荐项目。实验结果验证了基于MARM的冷启动推荐算法是高效的。

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