SCouT: Scalable coupled matrix-tensor factorization - algorithm and discoveries

Byungsoo Jeon, Inah Jeon, Lee Sael, U. Kang
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引用次数: 57

Abstract

How can we analyze very large real-world tensors where additional information is coupled with certain modes of tensors? Coupled matrix-tensor factorization is a useful tool to simultaneously analyze matrices and a tensor, and has been used for important applications including collaborative filtering, multi-way clustering, and link prediction. However, existing single machine or distributed algorithms for coupled matrix-tensor factorization do not scale for tensors with billions of elements in each mode. In this paper, we propose SCOUT, a large-scale coupled matrix-tensor factorization algorithm running on the distributed MAPREDUCE platform. By carefully reorganizing operations, and reusing intermediate data, SCOUT decomposes up to 100× larger tensors than existing methods, and shows linear scalability for order and machines while other methods are limited in scalability. We also apply SCOUT on real world tensors and discover interesting hidden patterns like seasonal spike, and steady attentions for healthy food on Yelp dataset containing user-business-yearmonth tensor and two coupled matrices.
可伸缩耦合矩阵张量分解-算法和发现
我们如何分析现实世界中非常大的张量,其中附加信息与张量的某些模态相耦合?耦合矩阵-张量分解是一种同时分析矩阵和张量的有用工具,已被用于协同过滤、多路聚类和链接预测等重要应用。然而,现有的单机或分布式耦合矩阵-张量分解算法不能适用于每个模式下具有数十亿个元素的张量。本文提出了一种基于分布式MAPREDUCE平台的大规模矩阵-张量耦合分解算法SCOUT。通过仔细重组操作和重用中间数据,SCOUT分解的张量比现有方法大100倍,并且显示出订单和机器的线性可扩展性,而其他方法在可扩展性方面受到限制。我们还将SCOUT应用于现实世界的张量,并在包含用户-业务-年-月张量和两个耦合矩阵的Yelp数据集上发现有趣的隐藏模式,如季节性峰值和健康食品的稳定关注。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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