协同过滤与CCAM

Meng-Lun Wu, Chia-Hui Chang, Rui-Zhe Liu
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引用次数: 3

摘要

推荐系统已成为学术界和业界高度关注的一个重要研究课题。作为推荐系统的一个分支,协同过滤(CF)系统起源于与他人分享意见,并已被证明在生成高质量推荐方面非常有效。然而,CF经常面临稀疏性问题,这是由于需要预测的未知数的评级数量相对较少造成的。在本文中,我们考虑了一种混合方法,该方法将基于内容的方法与协同过滤结合在一个称为增强数据矩阵(CCAM)的统一模型下。CCAM在信息论共聚类的基础上,进一步考虑了用户画像、物品描述等增广数据矩阵。通过提供更好的预测误差的结果,我们表明我们的算法通过优化多表数据之间互信息损失的共聚类比单数据算法更有效地解决稀疏性问题,并且在我们的预测框架中算法不考虑互信息损失或共聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative Filtering with CCAM
Recommender system has become an important research topic since the high interest of academia and industry. As a branch of recommender systems, collaborative filtering (CF) systems take its roots from sharing opinions with others and have been shown to be very effective for generating high quality recommendations. However, CF often confronts a problem of sparsity which is caused by relevantly less number of ratings against the unknowns that need to be predicted. In this paper, we consider a hybrid approach which combines the content-based approach with collaborative filtering under a unified model called Co-Clustering with Augmented data Matrix (CCAM). CCAM is based on information-theoretic co-clustering but further considers augmented data matrix like user profile and item description. By presenting results on a better error of prediction, we show that our algorithm is more effective in addressing sparsity through optimizing the co-cluster in mutual information loss between multiple tabular data than algorithm with single data and algorithms do not consider mutual information loss or co-clustering in our prediction framework.
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