Jeżeli nie znalazłeś poszukiwanej książki, skontaktuj się z nami wypełniając formularz kontaktowy.

Ta strona używa plików cookies, by ułatwić korzystanie z serwisu. Mogą Państwo określić warunki przechowywania lub dostępu do plików cookies w swojej przeglądarce zgodnie z polityką prywatności.

Wydawcy

Literatura do programów

Informacje szczegółowe o książce

Introduction to the Design and Analysis of Experiments - ISBN 9780470711071

Introduction to the Design and Analysis of Experiments

ISBN 9780470711071

Autor: Geoffrey M. Clarke, Robert E. Kempson

Wydawca: Wiley

Dostępność: 3-6 tygodni

Cena: 234,15 zł

Przed złożeniem zamówienia prosimy o kontakt mailowy celem potwierdzenia ceny.


ISBN13:      

9780470711071

ISBN10:      

0470711078

Autor:      

Geoffrey M. Clarke, Robert E. Kempson

Oprawa:      

Paperback

Rok Wydania:      

1996-11-29

Ilość stron:      

354

Wymiary:      

246x189

Tematy:      

PBT

Contains a detailed explanation of how to undertake and interpret computer analysis using the SAS package. This book includes worked examples as well as exercises at the end of each chapter. The authors provide full coverage of the basic principles behind the planning and analysis of experiments, without being too theoretical and using a practical approach.

Preface.

1 Collecting data by experiments.

1.1 Introduction.

1.2 Experiments.

1.3 Measurements of yield or response.

1.4 Natural variation in data.

1.5 Initial data analysis.

1.6 General applications of experimentation.

1.7 Exercises.

2 Basic statistical methods: the normal distribution.

2.1 Statistical inference for one sample of normally distributed data.

2.2 Hypothesis test.

2.3 Comparison of two samples of normally distributed data.

2.4 The F–test for comparing two estimated variances.

2.5 Confidence interval for the difference between two means.

2.6 ′Paired data′ t–test when samples are not independent.

2.7 Linear functions of normally distributed variables.

2.8 Linear models including normal random variation.

2.9 Exercises.

3 Principles of experimental design.

3.1 Introduction.

3.2 Treatment structure.

3.3 Changing background conditions the need for comparison.

3.4 Replication.

3.5 Randomization.

3.6 Blocking.

3.7 Sources of variation.

3.8 Planning the size of an experiment.

3.9 Exercises.

4 The analysis of data from orthogonal designs.

4.1 Introduction.

4.2 Comparing treatments.

4.3 Confidence intervals.

4.4 Homogeneity of variance.

4.5 The randomized complete block.

4.6 Duncan′s multiple range test.

4.7 Extra replication of important treatments.

4.8 Contrasts among treatments.

4.9 Latin squares and other orthogonal designs.

4.10 Graeco–Latin squares.

4.11 Two fallacies.

4.12 Assumptions in analysis: using residuals to examine them.

4.13 Transformations.

4.14 Theory of variance stabilization.

4.15 Missing data in block designs.

4.16 Exercises.

Appendix 4A Cochran′s Theorem on Quadratic Forms.

5 Factorial experiments.

5.1 Introduction.

5.2 Notation for factors at two levels.

5.3 Definition of main effect and interaction.

5.4 Three factors each at two levels.

5.5 A single factor at more than two levels.

5.6 General method for computing coefficients for orthogonal polynomials.

5.7 Exercises.

6 Experiments with many factors: confounding and fractional replication.

6.1 Introduction.

6.2 The principal block in confounding.

6.3 Single replicate.

6.4 Small experiments: partial confounding.

6.5 Very large experiments: fractional replication.

6.6 Replicates smaller than half size.

6.7 Confounding with fractional replication.

6.8 Confounding three–level factors.

6.9 Fractional replication in 3–level experiments.

6.10 Exercises.

Appendix 6A Methods of confounding in 2p factorial experiments.

7 Confounding main effects split–plot designs.

7.1 Introduction.

7.2 Linear model and analysis.

7.3 Studying interactions.

7.4 Repeated splitting.

7.5 Confounding in split–plot experiments.

7.6 Other designs for main plots.

7.7 Criss–cross design.

7.8 Exercises.

8 Industrial experimentation.

8.1 Introduction.

8.2 Taguchi methods in statistical quality control.

8.3 Loss functions.

8.4 Sources of variation.

8.5 Orthogonal arrays.

8.6 Choice of design.

9 Response surfaces and mixture designs.

9.1 Introduction.

9.2 Are experimental conditions constant ?

9.3 Response surfaces.

9.4 Experiments with three factors, x1, x2 and x3.

9.5 Second–order surfaces.

9.6 Contour diagrams in analysis.

9.7 Transformations.

9.8 Mixture designs.

9.9 Other types of response surface.

9.10 Exercises.

10 The analysis of covariance.

10.1 Introduction.

10.2 Analysis for a design in randomized blocks: general theory.

10.3 Individual contrasts.

10.4 Dummy covariance.

10.5 Systematic trend not removed by blocking.

10.6 Accidents in recording.

10.7 Assumptions in covariance analysis.

10.8 Missing values.

10.9 Double covariance.

10.10 Exercises.

11 Balanced incomplete blocks and general non–orthogonal block designs.

11.1 Introduction.

11.2 Definition and existence of a balanced incomplete block.

11.3 Methods of construction.

11.4 Linear model and analysis.

11.5 Row and column design: the Youden square.

11.6 General block designs.

11.7 Linear model and analysis.

11.8 Generalized inverse.

11.9 Application to designs with special patterns.

11.10 Exercises.

Appendix 11A Generalized inverse matrix by spectral decomposition.

Appendix 11B Natural contrasts and effective replication.

12 More advanced designs.

12.1 Introduction.

12.2 Crossover designs.

12.3 Lattices.

12.4 Alpha designs.

12.5 Partially balanced incomplete blocks (PBIBs).

13 Random effects models: variance components and sampling schemes.

13.1 Introduction.

13.2 Two stages of sampling: between and within units.

13.3 Assessing alternative sampling schemes.

13.4 Using variance components in planning when sampling costs are given.

13.5 Three levels of variation.

13.6 Costs in a three–stage scheme.

13.7 Example where one estimate is negative.

13.8 Exercises.

14 Computer output using SAS.

Bibliography and references.

Tables.

Index.

Koszyk

Książek w koszyku: 0 szt.

Wartość zakupów: 0,00 zł

ebooks
covid

Kontakt

Gambit
Centrum Oprogramowania
i Szkoleń Sp. z o.o.

Al. Pokoju 29b/22-24

31-564 Kraków


Siedziba Księgarni

ul. Kordylewskiego 1

31-542 Kraków

+48 12 410 5991

+48 12 410 5987

+48 12 410 5989

Zobacz na mapie google

Wyślij e-mail

Subskrypcje

Administratorem danych osobowych jest firma Gambit COiS Sp. z o.o. Na podany adres będzie wysyłany wyłącznie biuletyn informacyjny.

Autoryzacja płatności

PayU

Informacje na temat autoryzacji płatności poprzez PayU.

PayU banki

© Copyright 2012: GAMBIT COiS Sp. z o.o. Wszelkie prawa zastrzeżone.

Projekt i wykonanie: Alchemia Studio Reklamy