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Personalized Recommendation Based on Weighted Sequence Similarity

机译:基于加权序列相似性的个性化推荐

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The sequential pattern mining-based recommendation has recently become a popular research topic in the field of recommender system. However, this kind of methods usually relies on frequency counts of sequences, which makes low-frequency sequences contribute little for the final recommend results. To solve this problem, in this paper, we propose a weighted sequence similarity-based method, called Personalized Recommendation based on Sequence Similarity (PRSS), for personalized recommendation. First, item-sequence weight model is introduced, which can reflect different importance of different items to different sequences. Then, target users' sequence is compared with historical sequences using similarity function. Finally, the maximal common subsequence is proposed to rank candidate sequences and make recommendation. Experimental results show that PRSS generates more accurate recommendation for the target users.
机译:顺序模式挖掘的建议最近成为推荐系统领域的流行研究主题。然而,这种方法通常依赖于序列的频率计数,这使得低频序列为最终推荐结果贡献很少。为了解决这个问题,在本文中,我们提出了一种基于加权序列相似性的方法,基于序列相似性(PRS)称为个性化推荐,用于个性化推荐。首先,介绍了项目序列重量模型,其可以反映不同物品的不同重要性到不同的序列。然后,将目标用户的序列与使用相似性函数的历史序列进行比较。最后,提出了最大常见的子序列,以对候选序列进行排名并提出建议。实验结果表明,PRS为目标用户产生更准确的建议。

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