高维数据的快速多尺度框架:测量估计、异常检测和压缩测量

Guangliang Chen, M. Iwen, S. Chin, M. Maggioni
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引用次数: 23

摘要

数据集通常被建模为位于非常高维空间的某个概率分布的样本。在实践中,它们往往表现出较低的内在维数,这既可以快速构建有效的数据表示,也可以解决统计任务,如数据上的函数回归,甚至可以估计生成数据的概率分布。本文介绍了一种新的高维数据的多尺度密度估计器,并将其应用于动态数据或时间序列数据集分布变化的检测问题。我们还表明,我们的数据表示,这不是标准的稀疏线性展开,是适用于压缩测量。最后,我们在合成数据和由时间序列的高光谱图像组成的真实数据集上测试了我们的算法,并证明了它们在异常检测方面的高准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fast multiscale framework for data in high-dimensions: Measure estimation, anomaly detection, and compressive measurements
Data sets are often modeled as samples from some probability distribution lying in a very high dimensional space. In practice, they tend to exhibit low intrinsic dimensionality, which enables both fast construction of efficient data representations and solving statistical tasks such as regression of functions on the data, or even estimation of the probability distribution from which the data is generated. In this paper we introduce a novel multiscale density estimator for high dimensional data and apply it to the problem of detecting changes in the distribution of dynamic data, or in a time series of data sets. We also show that our data representations, which are not standard sparse linear expansions, are amenable to compressed measurements. Finally, we test our algorithms on both synthetic data and a real data set consisting of a times series of hyperspectral images, and demonstrate their high accuracy in the detection of anomalies.
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