稀疏数据推荐系统的迭代协同过滤

Zhuo Zhang, P. Cuff, S. Kulkarni
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引用次数: 7

摘要

协同过滤(CF)是推荐系统中最成功的技术之一。通过利用成对用户的共同评级项目进行相似性度量,传统的CF使用加权求和来预测基于可用评级的未知评级。然而,在实践中,评级矩阵过于稀疏,无法找到足够多的共同评级项目,从而导致不准确的预测。为了解决稀疏数据的情况,我们提出了一个迭代CF来更新相似度和评级矩阵。改进的CF基于自适应参数逐步选择缺失评级的可靠子集,从而基于相似性产生更可信的预测。在MovieLens数据集上的实验结果表明,当数据稀疏度为1%时,我们的算法明显优于传统的CF、Default Voting和SVD。结果还表明,在密集数据的情况下,我们的算法表现得和最先进的方法一样好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Iterative collaborative filtering for recommender systems with sparse data
Collaborative filtering (CF) is one of the most successful techniques in recommender systems. By utilizing co-rated items of pairwise users for similarity measurements, traditional CF uses a weighted summation to predict unknown ratings based on the available ones. However, in practice, the rating matrix is too sparse to find sufficiently many co-rated items, thus leading to inaccurate predictions. To address the case of sparse data, we propose an iterative CF that updates the similarity and rating matrix. The improved CF incrementally selects reliable subsets of missing ratings based on an adaptive parameter and therefore produces a more credible prediction based on similarity. Experimental results on the MovieLens dataset show that our algorithm significantly outperforms traditional CF, Default Voting, and SVD when the data is 1% sparse. The results also show that in the dense data case our algorithm performs as well as state of art methods.
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