Analysis of Messy Data, Volume III

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  • Analysis of Messy Data, Volume III Book Detail

  • Author : George A. Milliken
  • Release Date : 2001-08-29
  • Publisher : CRC Press
  • Genre : Mathematics
  • Pages : 625
  • ISBN 13 : 1420036181
  • File Size : 3,3 MB

Analysis of Messy Data, Volume III by George A. Milliken PDF Summary

Book Description: Analysis of covariance is a very useful but often misunderstood methodology for analyzing data where important characteristics of the experimental units are measured but not included as factors in the design. Analysis of Messy Data, Volume 3: Analysis of Covariance takes the unique approach of treating the analysis of covariance problem by looking

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Analysis of Messy Data, Volume III

Analysis of Messy Data, Volume III

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Analysis of covariance is a very useful but often misunderstood methodology for analyzing data where important characteristics of the experimental units are mea

Analysis of Messy Data Volume 1

Analysis of Messy Data Volume 1

File Size : 67,67 MB
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A bestseller for nearly 25 years, Analysis of Messy Data, Volume 1: Designed Experiments helps applied statisticians and researchers analyze the kinds of data s

Analysis of Messy Data

Analysis of Messy Data

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This classic reference details methods for effectively analyzing non-standard or messy data sets. The authors introduce each topic with examples, follow up with

Analysis of Messy Data, Volume II

Analysis of Messy Data, Volume II

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Researchers often do not analyze nonreplicated experiments statistically because they are unfamiliar with existing statistical methods that may be applicable. A