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Efficient dictionary learning via very sparse random projections

机译:高效的字典通过非常稀疏的随机投影学习

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Performing signal processing tasks on compressive measurements of data has received great attention in recent years. In this paper, we extend previous work on compressive dictionary learning by showing that more general random projections may be used, including sparse ones. More precisely, we examine compressive K-means clustering as a special case of compressive dictionary learning and give theoretical guarantees for its performance for a very general class of random projections. We then propose a memory and computation efficient dictionary learning algorithm, specifically designed for analyzing large volumes of high-dimensional data, which learns the dictionary from very sparse random projections. Experimental results demonstrate that our approach allows for reduction of computational complexity and memory/data access, with controllable loss in accuracy.
机译:在近年来,对数据的压缩测量执行信号处理任务已经受到极大的关注。在本文中,我们通过示出可以使用更多一般的随机投影来扩展到压缩词典学习的先前研究,包括稀疏的突发。更确切地说,我们将压缩k-merical聚类视为压缩词典学习的特殊情况,并为其对非常一般的随机投影进行性能提供理论保证。然后,我们提出了一种存储器和计算有效的字典学习算法,专门设计用于分析大量的高维数据,这将从非常稀疏的随机投影中了解字典。实验结果表明,我们的方法允许降低计算复杂性和存储器/数据访问,精度可控损耗。

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