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Multiscale and Multiresolution methods for Sparse representation of Large datasets

机译:大型数据集稀疏表示的多尺度和多分辨率方法

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In this paper, we have presented a strategy for studying a large observational dataset at different resolutions to obtain a sparse representation in a computationally efficient manner. Such representations are crucial for many applications from modeling and inference to visualization. Resolution here stems from the variation of the correlation strength among the different observation instances. The motivation behind the approach is to make a large dataset as small as possible by removing all the redundant information so that, the original data can be reconstructed with minimal losses of information.Our past work borrowed ideas from multilevel simulations to extract a sparse representaiton. Here, we introduce the use of multi-resolution kernels. We have tested our approach on a carefully designed suite of analytical functions along with gravity and altimetry time series datasets from a section of the Greenland Icesheet. In addition to providing a good strategy for data compression, the proposed approach also finds application in efficient sampling procedures and error filtering in the datasets. The results, presented in the article clearly establish the promising nature of the approach along with prospects of its application in different fields of data analytics in the scientific computing and related domains.
机译:在本文中,我们提出了一种策略,用于以不同的分辨率研究大型观测数据集,从而以计算有效的方式获得稀疏表示。这种表示对于从建模,推断到可视化的许多应用至关重要。这里的分辨率源于不同观测实例之间相关强度的变化。该方法背后的动机是通过删除所有冗余信息来使大型数据集尽可能小,以便可以在信息损失最小的情况下重建原始数据。我们过去的工作借鉴了多级仿真的思想,以提取稀疏表示。在这里,我们介绍多分辨率内核的使用。我们已经在一套精心设计的分析函数以及来自格陵兰冰原一部分的重力和测高时间序列数据集上测试了我们的方法。除了为数据压缩提供良好的策略外,所提出的方法还可以应用于有效的采样程序和数据集中的错误过滤。本文提供的结果清楚地证明了该方法的前景,以及其在科学计算和相关领域的数据分析的不同领域中的应用前景。

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