: Kai-Tai Fang, Min-Qian Liu, Hong Qin, Yong-Dao Zhou
: Theory and Application of Uniform Experimental Designs
: Springer-Verlag
: 9789811320415
: 1
: CHF 71.20
:
: Wahrscheinlichkeitstheorie, Stochastik, Mathematische Statistik
: English
: 312
: Wasserzeichen/DRM
: PC/MAC/eReader/Tablet
: PDF

The book provides necessary knowledge for readers interested in developing the theory of uniform experimental design. It discusses measures of uniformity, various construction methods of uniform designs, modeling techniques, design and modeling for experiments with mixtures, and the usefulness of the uniformity in block, factorial and supersaturated designs.

Experimental design is an important branch of statistics with a long history, and is extremely useful in multi-factor experiments. Involving rich methodologies and various designs, it has played a key role in industry, technology, sciences and various other fields. A design that chooses experimental points uniformly scattered on the domain is known as uniform experimental design, and uniform experimental design can be regarded as a fractional factorial design with model uncertainty, a space-filling design for computer experiments, a robust design against the model specification, and a supersaturated design and can be applied to experiments with mixtures.



Kai-Tai Fang is a professor at the BNU-HKBU United International college and is a research professor at the Institute of Applied Mathematics, Chinese Academy of Sciences, Beijing, China.

Min-Qian Liu is a professor at the Institute of Statistics, Nankai University, Tianjin, China

Hong Qin is a professor at the Faculty of Mathematics and Statistics, Central China Normal

University, Wuhan, China

Yong-Dao Zhou is a professor at the Institute of Statistics, Nankai University, Tianjin, China

Foreword6
Preface9
References11
Contents12
1 Introduction16
1.1 Experiments16
1.1.1 Examples17
1.1.2 Experimental Characteristics20
1.1.3 Type of Experiments22
1.2 Basic Terminologies Used24
1.3 Statistical Models27
1.3.1 Factorial Designs and ANOVA Models28
1.3.2 Fractional Factorial Designs31
1.3.3 Linear Regression Models34
1.3.4 Nonparametric Regression Models38
1.3.5 Robustness of Regression Models40
1.4 Word-Length Pattern: Resolution and Minimum Aberration41
1.4.1 Ordering41
1.4.2 Defining Relation42
1.4.3 Word-Length Pattern and Resolution44
1.4.4 Minimum Aberration Criterion and Its Extension45
1.5 Implementation of Uniform Designs for Multifactor Experiments47
1.6 Applications of the Uniform Design52
References55
2 Uniformity Criteria58
2.1 Overall Mean Model58
2.2 Star Discrepancy61
2.2.1 Definition61
2.2.2 Properties63
2.3 Generalized L2-Discrepancy67
2.3.1 Definition68
2.3.2 Centered L2-Discrepancy69
2.3.3 Wrap-around L2-Discrepancy71
2.3.4 Some Discussion on CD and WD72
2.3.5 Mixture Discrepancy76
2.4 Reproducing Kernel for Discrepancies79
2.5 Discrepancies for Finite Numbers of Levels85
2.5.1 Discrete Discrepancy86
2.5.2 Lee Discrepancy88
2.6 Lower Bounds of Discrepancies89
2.6.1 Lower Bounds of the Centered L2-Discrepancy91
2.6.2 Lower Bounds of the Wrap-around L2-Discrepancy94
2.6.3 Lower Bounds of Mixture Discrepancy101
2.6.4 Lower Bounds of Discrete Discrepancy106
2.6.5 Lower Bounds of Lee Discrepancy109