Zooming Statistics: Inference across scales

  • Hannig, Jan (Department of Statistics, Colorado State University) ;
  • Marron, J.S. (Department of Statistics, University of North Carolina) ;
  • Riedi, R.H. (Department of Electrical and Computer Engineering, Rice University)
  • Published : 2001.06.01

Abstract

New statistical methods are ended to analyzed data in a multi-scale way. Some multi-scale extensions of stand methods, including novel visualization using dynamic graphics are proposed. These tools are used to explore non-standard structure in internet traffic data.

Keywords

References

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