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Multi-attribute Collaborative Filtering Recommendation based on Improved Group Decision-making

机译:基于改进群体决策的多属性协同过滤推荐

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Currently researchers in the field of personalized recommendations bear little consideration on users' interest differences in resource attributes although resource attribute is usually one of the most important factors in determining user preferences. To solve this problem, the paper builds an evaluation model of user interest based on resource multi-attributes, proposes a modified Pearson-Compatibility multi-attribute group decision-making algorithm, and introduces an algorithm to solve the recommendation problem of k-neighbor similar users. Considering the characteristics of collaborative filtering recommendation, the paper addresses the issues on the preference differences of similar users, incomplete values, and advanced converge of the algorithm. Thus the paper realizes multi-attribute collaborative filtering. Finally, the effectiveness of the algorithm is proved by an experiment of collaborative recommendation among multi-users based on virtual environment. The experimental results show that the algorithm has a high accuracy on predicting target users' attribute preferences and has a strong anti-interference ability on deviation and incomplete values.
机译:当前,个性化推荐领域的研究人员很少考虑用户对资源属性的兴趣差异,尽管资源属性通常是确定用户偏好的最重要因素之一。针对这一问题,本文建立了一种基于资源多属性的用户兴趣评价模型,提出了一种改进的Pearson-Compatibility多属性群决策算法,并提出了一种解决k邻居相似度推荐问题的算法。用户。考虑到协同过滤推荐的特点,解决了相似用户偏好差异,值不完全,算法高级收敛等问题。因此,本文实现了多属性协同过滤。最后,通过基于虚拟环境的多用户协作推荐实验,证明了该算法的有效性。实验结果表明,该算法在预测目标用户属性偏好方面具有很高的准确性,对偏差和不完全值具有很强的抗干扰能力。

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