数据流上的自适应小波密度估计

C. Heinz, B. Seeger
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引用次数: 13

摘要

各种科学和商业应用需要对瞬态数据流进行即时分析。许多分析数据的方法都有一个共同的特性,即使用对底层数据分布的估计作为基本构建块。为了估计连续数据分布的密度,小波密度估计是一种来自非参数统计领域的技术,它非常吸引人,因为它在理论上是有充分根据的,并且在实践中得到了认可。因此,它在数据流中的应用是非常有前途的;它提供了一种方便的方法来分析流的特性。然而,小波密度估计器的计算量大,使其无法直接应用于流场景。在这项工作中,我们解决了这个问题,并提出了一种新的数据流自适应小波密度估计方法。我们的估计器不仅满足数据流的严格处理需求,而且还以良好定义的方式适应不断变化的系统资源。一个彻底的实验评估证明了我们的小波密度估计器的有效性,并显示了它们相对于基于核和直方图的估计器的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Wavelet Density Estimators over Data Streams
A variety of scientific and commercial applications requires an immediate analysis of transient data streams. Many approaches for analyzing data share the property that an estimation of the underlying data distribution is used as a fundamental building block. To estimate the density of a continuous data distribution, wavelet density estimation, a technique from the area of nonparametric statistics, is very appealing as it is theoretically well-founded and practically approved. For that reason, its application to data streams is highly promising; it provides a convenient way to analyze the characteristics of a stream. However, the heavy computational cost of wavelet density estimators renders their direct application to the streaming scenario impossible. In this work, we tackle this problem and present a novel approach to adaptive wavelet density estimators over data streams. Not only do our estimators meet the rigid processing requirements for data streams, they also adapt to changing system resources in a well-defined manner. A thorough experimental evaluation demonstrates the efficacy of our wavelet density estimators and shows their superiority to competing kernel- and histogram-based estimators.
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