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A Personalized Recommendation Algorithm Based on Associative Sets

机译:基于关联集的个性化推荐算法

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摘要

During the process of personalized recommendation,some items evaluated by users are performed by accident,in other words,they have little correlation with users'real preferences. These irrelevant items are equal to noise data,and often interfere with the effectiveness of collaborative filtering. A personalized recommendation algorithm based on Associative Sets is proposed in this paper to solve this problem. It uses frequent itemsets to filter out noise data,and makes recommendations according to users' real preferences,so as to enhance the accuracy of recommending results. Test results have proved the superiority of this algorithm.
机译:在个性化推荐过程中,用户评价的一些项目是偶然执行的,也就是说,它们与用户的真实偏好几乎没有关联。这些无关紧要的项目等于噪声数据,并且经常干扰协作过滤的有效性。针对该问题,提出了一种基于关联集的个性化推荐算法。它使用频繁的项目集过滤掉噪声数据,并根据用户的实际喜好进行推荐,从而提高了推荐结果的准确性。测试结果证明了该算法的优越性。

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