
Practical Data Analysis for Designed Experiments
Brian S. Yandell(Author)
Chapman & Hall/CRC (Publisher)
Published on 1. January 1997
Book
Paperback/Softback
XIV, 437 pages
978-0-412-06341-1 (ISBN)
Description
This book is aimed at statisticians and scientists who want practical expe rience with the analysis of designed experiments. My intent is to provide enough theory to understand the analysis of standard and non-standard experimental designs. Concepts are motivated with data from real experi ments gathered during over a dozen years of statistical consulting with scientists in the College of Agriculture and Life Sciences, augmented by teaching statistics courses on the 'Theory and Practice of Linear Mod els' (Stat 850) and 'Statistical Consulting' (Stat 998) at the University of Wisconsin-Madison. Students and colleagues have taught me much about what I tend to assume and about how to blend theory and practice in the classroom. I had hoped to find a textbook geared to this subject. I began by using Scheffe's Analysis of Variance to establish the theoretical framework, and Milliken and Johnson's Analysis of Messy Data to provide the practical guidelines. What I wanted was half-way in-between. Searle's Linear Models for Unbalanced Data has much the flavor I desired, but seems too detailed in some aspects for the classroom setting. Several other texts have noteworthy strengths, in particular Neter, Wasserman and Kutner's Applied Linear Statistical Models {3rd edn., Irwin, Boston, 1990), but do not cover the material with my preferred emphasis. This book can be used as a first or second semester text on linear models.
Reviews / Votes
"...the book should be useful for statisticians who are starting out as consultants...also contains much good practical advice based on the writer's experience as a teacher and statistical advisor."-M. Talbot, Biometrics, December 1998
"...gives a generally lucid and well thought out introduction to the use of data driven approaches for statistical data analysis...the explanations are clear, without being obscured by too much mathematical detail...an excellent basis for a statistics course with an applied orientation, and most institutions that teach statistics or analyse data will probably want a library copy."
-S.N. Wood,Biometrics,December 1998
More details
Series
Edition
Softcover reprint of the original 1st ed. 1997
Language
English
Place of publication
Oxford
United Kingdom
Publishing group
Taylor & Francis Ltd
Target group
Professional and scholarly
Research
Dimensions
Height: 23.5 cm
Width: 15.5 cm
Weight
688 gr
ISBN-13
978-0-412-06341-1 (9780412063411)
DOI
10.1007/978-1-4899-3035-4
Schweitzer Classification
Other editions
Additional editions

Brian S. Yandell
Practical Data Analysis for Designed Experiments
E-Book
11/2017
Routledge
€224.99
Available for download

Brian S. Yandell
Practical Data Analysis for Designed Experiments
E-Book
11/2017
Routledge
€225.99
Available for download
Person
BrianS. Yandell
Content
Preface Part A: Placing Data in Context Practical Data Analysis Effect of Factors Nature of Data Summary Tables Plots for Statistics Computing Interpretation Problems Collaboration in Science Asking Questions Learning from Plots Mechanics of a Consulting Session Philosophy and Ethics Intelligence, Culture and Learning Writing Problems Experimental Design Types of Studies Designed Experiments Design Structure Treatment Structure Designs in This Book Problems Part B: Working with Groups of Data Group Summaries Graphical Summaries Estimates of Means and Variance Assumptions and Pivot Statistics Interval Estimates of Means Testing Hypotheses about Means Formal Inference on the Variance Problems Comparing Several Means Linear Contrasts of Means Overall Test of Difference Partitioning Sums of Squares Expected Mean Squares Power and Sample Size Problems Multiple Comparisons of Means Experiment- and Comparison-Wise Error Rates Comparisons Based on F-Tests Comparisons Based on Range of Means Comparisons of Comparisons Problems Part C: Sorting Out Effects with Data Factorial Designs Cell Means Models Effects Models Estimable Functions Linear Constraints General Form of Estimable Functions Problems Balanced Experiments Additive Models Full Models with Two Factors Interaction Plots Higher Orders Models Problems Model Selection Pooling Interactions Selected the Best Model Model Selection Criteria One Observation per Cell Tukey's Test for Interaction Problems Part D: Dealing with Imbalance Unbalanced Experiments Unequal Samples Additive Model Types I, II, III and IV Problems Missing Cells What Are Missing Cells? Connected Cells and Incomplete Designs Type IV Comparisons Latin Square Designs Fractional Factorial Designs Problems Linear