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Computer-graphical exploration of large data sets from teletraffic.

机译:远程交通中的大数据集的计算机图形学探索。

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摘要

The availability of large data sets and powerful computing resources has made data analysis an increasingly viable approach to understanding random processes. Of particular interest are exploratory techniques which provide insight into the local path behavior of highly positively correlated processes. We focus on actual and simulated teletraffic data in the form of time series. Our foremost objective is to develop a methodology of identifying and classifying shape features which are essentially unrecognizable with standard statistical descriptors.;Using basic aspects of human vision as a heuristic guide, we have developed an algorithm which "sketches" data sequences. Our approach to summarizing path behavior is based on exploiting the simple structure of a sketch. We have developed a procedure whereby all the "shapes" of a sketch are summarized in a visually comprehensible manner. We do so by placing the shapes in classes, then displaying, for each class, both a representative shape and the number of shapes in the class. These "shape histograms" can provide substantial insight into the behavior of sample paths.;We have also used sketches to help model data sequences. The idea here is that a model based on a sketch of a data sequence may provide a better fit under some circumstances than a model based directly on the data. By considering various sketches, one could, for example, develop a Markov chain model whose autocorrelation function approximates that of the original data. We have generalized this use of sketches so that a data sequence can be modeled as the superposition of several sketches, each capturing a different level of detail.;Because the concept of path shape is highly visual, it is important that our techniques exploit the strengths of and accommodate for the weaknesses of human vision. We have addressed this by using computer graphics in a variety of novel ways.
机译:大数据集和强大的计算资源的可用性使数据分析成为理解随机过程的日益可行的方法。特别令人感兴趣的是探索性技术,这些技术可洞察高度正相关的过程的局部路径行为。我们关注时间序列形式的实际和模拟的远程交通数据。我们的首要目标是开发一种识别和分类形状特征的方法,这些形状特征基本上无法用标准的统计描述符识别。使用人类视觉的基本方面作为启发式指南,我们开发了一种“简化”数据序列的算法。我们总结路径行为的方法是基于利用草图的简单结构。我们已经开发出一种程序,可以以视觉上可理解的方式概括草图的所有“形状”。我们通过将形状放置在类中,然后为每个类显示一个代表性形状和该类中的形状数量来做到这一点。这些“形状直方图”可以提供对样本路径行为的深入了解。;我们还使用草图来帮助对数据序列进行建模。这里的想法是,在某些情况下,基于数据序列草图的模型可能比直接基于数据的模型提供更好的拟合。通过考虑各种草图,可以开发一个马尔可夫链模型,其自相关函数近似于原始数据。我们对草图的这种使用进行了概括,以便可以将数据序列建模为几个草图的叠加,每个草图捕获不同级别的细节。;由于路径形状的概念是高度可视化的,因此利用我们的技术的优势很重要并适应人类视觉的弱点。我们通过以各种新颖的方式使用计算机图形来解决此问题。

著录项

  • 作者

    Rauschenberg, David Edward.;

  • 作者单位

    The University of Arizona.;

  • 授予单位 The University of Arizona.;
  • 学科 Statistics.;Operations research.
  • 学位 Ph.D.
  • 年度 1994
  • 页码 241 p.
  • 总页数 241
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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