Predictor sort sampling, tight t"s, and the analysis of covariance
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Predictor sort sampling, tight t"s, and the analysis of covariance theory, tables, and examples by Steve P. Verrill

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Published by U.S. Dept. of Agriculture, Forest Service, Forest Products Laboratory in Madison, Wis .
Written in English


  • Wood -- Sampling.,
  • Statistics -- Tables.

Book details:

Edition Notes

Other titlesTight t"s and the analysis of covariance.
StatementSteve P. Verrill, David W. Green.
SeriesResearch paper FPL-RP -- 558.
ContributionsGreen, David W., Forest Products Laboratory (U.S.)
The Physical Object
Pagination105 p. :
Number of Pages105
ID Numbers
Open LibraryOL15480118M

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