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Gaussian Cubes: Real-Time Modeling for Visual Exploration of Large Multidimensional Datasets

机译:高斯立方体:用于大型多维数据集可视化探索的实时建模

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Recently proposed techniques have finally made it possible for analysts to interactively explore very large datasets in real time. However powerful, the class of analyses these systems enable is somewhat limited: specifically, one can only quickly obtain plots such as histograms and heatmaps. In this paper, we contribute Gaussian Cubes, which significantly improves on state-of-the-art systems by providing interactive modeling capabilities, which include but are not limited to linear least squares and principal components analysis (PCA). The fundamental insight in Gaussian Cubes is that instead of precomputing counts of many data subsets (as state-of-the-art systems do), Gaussian Cubes precomputes the best multivariate Gaussian for the respective data subsets. As an example, Gaussian Cubes can fit hundreds of models over millions of data points in well under a second, enabling novel types of visual exploration of such large datasets. We present three case studies that highlight the visualization and analysis capabilities in Gaussian Cubes, using earthquake safety simulations, astronomical catalogs, and transportation statistics. The dataset sizes range around one hundred million elements and 5 to 10 dimensions. We present extensive performance results, a discussion of the limitations in Gaussian Cubes, and future research directions.
机译:最近提出的技术最终使分析人员可以实时交互地探索非常大的数据集。这些系统支持的分析功能多么强大,但在某种程度上受到了限制:特别是,一个系统只能快速获取直方图和热图等图。在本文中,我们贡献了高斯立方体,它通过提供交互式建模功能(包括但不限于线性最小二乘法和主成分分析(PCA)),极大地改进了最新系统。高斯立方体的基本见解是,与其预先计算许多数据子集的数量(如最新系统一样),高斯立方体还为各个数据子集预先计算了最佳的多元高斯模型。例如,高斯多维数据集可以在一秒钟内很好地拟合数百个数据点上的数百个模型,从而可以对此类大型数据集进行新颖的可视化探索。我们通过地震安全模拟,天文目录和运输统计数据,展示了三个案例研究,重点介绍了高斯立方体的可视化和分析功能。数据集的大小范围约为一亿个元素和5至10个维度。我们提出了广泛的性能结果,讨论了高斯立方体的局限性以及未来的研究方向。

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