Linear regression methods for forest research
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Linear regression methods for forest research

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


  • Mathematical statistics.,
  • Forests and forestry -- Research.

Book details:

Edition Notes

Cover title.

StatementFrank Freese.
SeriesU. S. Forest service research paper FPL 17.
LC ClassificationsTS801 .U493 no. 17
The Physical Object
Paginationii, 136 p. :
Number of Pages136
ID Numbers
Open LibraryOL5965089M
LC Control Number65061564

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