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Distributed matrix completion for large-scale multi-label classification

机译:大规模多标签分类的分布式矩阵完成

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摘要

Large-scale multi-label classification has always been of great interest for researchers. The difficulty with such problems is the huge amount of data that should be processed, possibly in multiple paths. This amount of data does not fit in the memory of a single computer and that is the bottle-neck for many large-scale applications. On the other hand, matrix completion is a great tool for many applications, including classification. It is a great tool for modeling the data and finding the outliers and noises within the data. In this paper, we develop a distributed matrix completion method for multi-label classification. To do this, we first propose a simple distributed algorithm for minimizing the nuclear norm of a matrix to recover its low-rank representation, which is then generalized for the classification problem. Several synthetic and real datasets are used to verify both the distributed nuclear norm minimization and the distributed matrix completion approach. The results indicate that the proposed algorithm outperforms state-of-the-art methods for large-scale classification.
机译:大规模的多标签分类一直是研究人员关注的焦点。此类问题的困难在于,可能需要在多个路径中处理的大量数据。此数据量无法容纳在一台计算机的内存中,这是许多大规模应用程序的瓶颈。另一方面,矩阵完成对于许多应用程序(包括分类)是一个很好的工具。这是用于对数据建模并查找数据中的异常值和噪声的出色工具。在本文中,我们开发了一种用于多标签分类的分布式矩阵完成方法。为此,我们首先提出一种简单的分布式算法,用于最小化矩阵的核范数以恢复其低秩表示,然后将其推广用于分类问题。几个合成的和真实的数据集被用来验证分布式核规范最小化和分布式矩阵完成方法。结果表明,所提算法优于大规模分类的最新方法。

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