结合光谱- cf和FP-Growth进行推荐

H. Zhang, Yu Liu, Keyin Cao
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引用次数: 4

摘要

在信息超载的时代,信息消费者和信息生产者都遇到了巨大的挑战:对于信息消费者来说,从海量的信息中找到自己感兴趣的信息是非常困难的。推荐系统是解决这一矛盾的重要工具。尽管协同过滤(CF)很受欢迎,但基于协同过滤的方法仍然受到冷启动和数据稀疏性问题的困扰。本文以商品推荐为研究对象,提出了一种结合spectrum - cf和FP-Growth的推荐算法。首先,关联规则算法FP-Growth直接挖掘目标用户与目标物品之间的关联规则,并为用户推荐相似度较高的物品集合。其次,利用谱协同滤波算法在谱域进行卷积运算。最后,结合spectrum - cf和FP-Growth推荐给出最终结果。在MovieLens数据集上的实验结果表明,该方法能较好地解决数据稀疏性和冷启动问题,提高推荐的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating Spectral-CF and FP-Growth for Recommendation
In the era of information overload, both information consumers and information producers have encountered great challenges: for information consumers, it is very difficult to find information of interest from a large amount of information. The recommendation system is an important tool to resolve this contradiction. Despite the popularity of Collaborative Filtering (CF), CF-based methods are haunted by the cold-start and data sparseness problems. This paper took commodity recommendation as to the research object and proposed a recommendation algorithm that combines Spectral-CF and FP-Growth. Firstly, Firstly, the association rule algorithm FP-Growth is mine the association rules of the target user and the target item directly, and recommend the collection of items with higher similarity for the user. Secondly, using a spectral collaborative filtering algorithm Perform convolution operations in the spectral domain. Finally, providing the final result by combining the Spectral-CF and FP-Growth recommendation. The experimental results on the MovieLens dataset show that the proposed method can better solve the problem of data sparseness and cold-start problems, improvement the accuracy of recommendation.
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