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The Optimal Design of Blocked and Split-Plot Experiments

The Optimal Design of Blocked and Split-Plot Experiments

by Peter Goos
Paperback
Publication Date: 10/07/2002

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This book provides a comprehensive treatment of the design of blocked and split-plot experiments.


The optimal design approach advocated in the book will help applied statisticians from industry, medicine, agriculture, chemistry and many other fields of study in setting up tailor-made experiments.


The book also contains a theoretical background, a thorough review of the recent work in the area of blocked and split-plot experiments, and a number of interesting theoretical results.
ISBN:
9780387955155
9780387955155
Category:
Probability & statistics
Format:
Paperback
Publication Date:
10-07-2002
Language:
English
Publisher:
Springer-Verlag New York Inc.
Country of origin:
United States
Pages:
264
Dimensions (mm):
235x155x14mm
Weight:
0.83kg

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