计算机科学
推荐系统
矩阵分解
缺少数据
张量(固有定义)
理论计算机科学
图形
因式分解
数据挖掘
插补(统计学)
非负矩阵分解
排
算法
机器学习
数学
物理
数据库
特征向量
量子力学
纯数学
作者
Vassilis N. Ioannidis,Ahmed S. Zamzam,Georgios B. Giannakis,Nicholas D. Sidiropoulos
出处
期刊:Cornell University - arXiv
日期:2018-01-01
被引量:8
标识
DOI:10.48550/arxiv.1809.08353
摘要
Joint analysis of data from multiple information repositories facilitates uncovering the underlying structure in heterogeneous datasets. Single and coupled matrix-tensor factorization (CMTF) has been widely used in this context for imputation-based recommendation from ratings, social network, and other user-item data. When this side information is in the form of item-item correlation matrices or graphs, existing CMTF algorithms may fall short. Alleviating current limitations, we introduce a novel model coined coupled graph-tensor factorization (CGTF) that judiciously accounts for graph-related side information. The CGTF model has the potential to overcome practical challenges, such as missing slabs from the tensor and/or missing rows/columns from the correlation matrices. A novel alternating direction method of multipliers (ADMM) is also developed that recovers the nonnegative factors of CGTF. Our algorithm enjoys closed-form updates that result in reduced computational complexity and allow for convergence claims. A novel direction is further explored by employing the interpretable factors to detect graph communities having the tensor as side information. The resulting community detection approach is successful even when some links in the graphs are missing. Results with real data sets corroborate the merits of the proposed methods relative to state-of-the-art competing factorization techniques in providing recommendations and detecting communities.
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