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Visualizing categorical time series data with applications to computer and communications network traces.

机译:使用计算机和通信网络跟踪中的应用程序可视化分类时间序列数据。

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摘要

Visualization tools allow scientists to comprehend very large data sets and to discover relationships which are otherwise difficult to detect. Unfortunately, not all types of data can be visualized easily using existing tools. In particular, long sequences of nonnumeric data cannot be visualized adequately. Examples of this type of data include trace files of computer performance information, the nucleotides in a genetic sequence, a record of stocks traded over a period of years, and the sequence of words in this document. The term categorical time series is defined and used to describe this family of data.; When visualizations designed for numerical time series are applied to categorical time series, the distortions which result from the arbitrary conversion of unordered categorical values to totally ordered numerical values can be profound. Examples of this phenomenon are presented and explained.; Several new, general purpose techniques for visualizing categorical time series data have been developed as part of this work and have been incorporated into the C scHITRA performance analysis and visualization system. All of these new visualizations can be produced in {dollar}O(n){dollar} time. The new visualizations for categorical time series provide general purpose techniques for visualizing aspects of categorical data which are commonly of interest. These include periodicity, stationarity, cross-correlation, autocorrelation, and the detection of recurring patterns.; The effective use of these visualizations is demonstrated in a number of application domains, including performance analysis, World Wide Web traffic analysis, network routing simulations, document comparison, pattern detection, and the analysis of the performance of genetic algorithms.
机译:可视化工具使科学家能够理解非常大的数据集,并发现原本难以发现的关系。不幸的是,使用现有工具无法轻松显示所有类型的数据。特别是,不能充分可视化长序列的非数值数据。此类数据的示例包括计算机性能信息的跟踪文件,遗传序列中的核苷酸,几年内交易的股票记录以及本文档中的单词序列。术语分类时间序列已定义并用于描述该数据族。当为数字时间序列设计的可视化应用于分类时间序列时,由无序分类值到完全有序数值的任意转换导致的失真可能会很大。介绍并解释了这种现象的例子。作为这项工作的一部分,已经开发了几种用于可视化分类时间序列数据的通用技术,这些技术已被整合到C scHITRA性能分析和可视化系统中。所有这些新的可视化效果都可以在{dollar} O(n){dollar}时间内生成。分类时间序列的新可视化提供了通用技术,用于可视化通常令人感兴趣的分类数据的各个方面。这些包括周期性,平稳性,互相关,自相关和重复模式的检测。这些可视化的有效使用在许多应用领域得到了证明,包括性能分析,万维网流量分析,网络路由仿真,文档比较,模式检测以及遗传算法性能分析。

著录项

  • 作者

    Ribler, Randy Louis.;

  • 作者单位

    Virginia Polytechnic Institute and State University.;

  • 授予单位 Virginia Polytechnic Institute and State University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 1997
  • 页码 219 p.
  • 总页数 219
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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