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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Coupled Graphs and Tensor Factorization for Recommender Systems and Community Detection
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Coupled Graphs and Tensor Factorization for Recommender Systems and Community Detection

机译:耦合图和张量分解,用于推荐系统和社区检测

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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.
机译:来自多个信息存储库的数据的联合分析有助于揭示异构数据集中的底层结构。单个和耦合矩阵张量分解(CMTF)已广泛用于从评级,社交网络和其他用户项数据的基于归属的基于估算的推荐。当该侧信息以项目项目相关矩阵或图形的形式时,现有的CMTF算法可能会缩短。减轻当前限制,我们介绍了一种新颖的模型被创建的耦合图 - 张量因子(CGTF),明智地占与图形相关的副信息。 CGTF模型具有克服实际挑战的可能性,例如来自张量和/或来自相关矩阵的行/或丢失的行/列的板坯。还开发了一种新颖的乘法器(ADMM)的交替方向方法,其恢复了CGTF的非负因子。我们的算法享有封闭式更新,导致计算复杂性降低并允许收敛要求。通过采用可解释的因素来进一步探索一种新颖的方向,以检测具有张量作为侧信息的图形社区。即使缺少图表中的某些链接,也是成功的社区检测方法是成功的。实际数据集的结果证实了相对于最先进的竞争分解技术的所提出方法的优点,在提供建议和检测社区中。

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