John Wiley & Sons Modern Analysis of Customer Surveys Cover This book introduces customer satisfaction surveys, with a focus on the classical problems of analyz.. Product #: 978-0-470-97128-4 Regular price: $101.87 $101.87 Auf Lager

Modern Analysis of Customer Surveys

with Applications using R

Kenett, Ron S. / Salini, Silvia

Statistics in Practice

Cover

1. Auflage Januar 2012
524 Seiten, Hardcover
Wiley & Sons Ltd

ISBN: 978-0-470-97128-4
John Wiley & Sons

Kurzbeschreibung

This book introduces customer satisfaction surveys, with a focus on the classical problems of analyzing them. Each chapter describes, in detail, a different technique applied to the standard dataset along with R scripts on a supporting website. Most of the techniques featured are applied to a standard set of data collected from 266 companies (customers) participating in the ABC Annual Customer Satisfaction Survey conducted by KPA in 2004 for an international electronics company. The data refers to a questionnaire that covered a wide range of service and product perspectives.

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Customer survey studies deals with customers, consumers and user satisfaction from a product or service. In practice, many of the customer surveys conducted by business and industry are analyzed in a very simple way, without using models or statistical methods. Typical reports include descriptive statistics and basic graphical displays. As demonstrated in this book, integrating such basic analysis with more advanced tools, provides insights on non-obvious patterns and important relationships between the survey variables. This knowledge can significantly affect the conclusions derived from a survey.

Key features:
* Provides an integrated, case-studies based approach to analysing customer survey data.
* Presents a general introduction to customer surveys, within an organization's business cycle.
* Contains classical techniques with modern and non standard tools.
* Focuses on probabilistic techniques from the area of statistics/data analysis and covers all major recent developments.
* Accompanied by a supporting website containing datasets and R scripts.

Customer survey specialists, quality managers and market researchers will benefit from this book as well as specialists in marketing, data mining and business intelligence fields.

Foreword xvii

Preface xix

Contributors xxiii

PART I BASIC ASPECTS OF CUSTOMER SATISFACTION

SURVEY DATA ANALYSIS

1 Standards and classical techniques in data analysis of customer satisfaction surveys 3
Silvia Salini and Ron S. Kenett

1.1 Literature on customer satisfaction surveys 4

1.2 Customer satisfaction surveys and the business cycle 4

1.3 Standards used in the analysis of survey data 7

1.4 Measures and models of customer satisfaction 12

1.5 Organization of the book 15

1.6 Summary 17

References 17

2 The ABC annual customer satisfaction survey 19
Ron S. Kenett and Silvia Salini

2.1 The ABC company 19

2.2 ABC 2010 ACSS: Demographics of respondents 20

2.3 ABC 2010 ACSS: Overall satisfaction 22

2.4 ABC 2010 ACSS: Analysis of topics 24

2.5 ABC 2010 ACSS: Strengths and weaknesses and decision drivers 27

2.6 Summary 28

References 28

Appendix 29

3 Census and sample surveys 37
Giovanna Nicolini and Luciana Dalla Valle

3.1 Introduction 37

3.2 Types of surveys 39

3.3 Non-sampling errors 41

3.4 Data collection methods 44

3.5 Methods to correct non-sampling errors 46

3.6 Summary 51

References 52

4 Measurement scales 55
Andrea Bonanomi and Gabriele Cantaluppi

4.1 Scale construction 55

4.2 Scale transformations 60

Acknowledgements 69

References 69

5 Integrated analysis 71
Silvia Biffignandi

5.1 Introduction 71

5.2 Information sources and related problems 73

5.3 Root cause analysis 78

5.4 Summary 87

Acknowledgement 87

References 87

6 Web surveys 89
Roberto Furlan and Diego Martone

6.1 Introduction 89

6.2 Main types of web surveys 90

6.3 Economic benefits of web survey research 91

6.4 Non-economic benefits of web survey research 94

6.5 Main drawbacks of web survey research 96

6.6 Web surveys for customer and employee satisfaction projects 100

6.7 Summary 102

References 102

7 The concept and assessment of customer satisfaction 107
Irena OgrajenÇsek and Iddo Gal

7.1 Introduction 107

7.2 The quality-satisfaction-loyalty chain 108

7.3 Customer satisfaction assessment: Some methodological considerations 115

7.4 The ABC ACSS questionnaire: An evaluation 119

7.5 Summary 121

References 122

Appendix 126

8 Missing data and imputation methods 129
Alessandra Mattei, Fabrizia Mealli and Donald B. Rubin

8.1 Introduction 129

8.2 Missing-data patterns and missing-data mechanisms 131

8.3 Simple approaches to the missing-data problem 134

8.4 Single imputation 136

8.5 Multiple imputation 138

8.6 Model-based approaches to the analysis of missing data 144

8.7 Addressing missing data in the ABC annual customer satisfaction survey: An example 145

8.8 Summary 149

Acknowledgements 150

References 150

9 Outliers and robustness for ordinal data 155
Marco Riani, Francesca Torti and Sergio Zani

9.1 An overview of outlier detection methods 155

9.2 An example of masking 157

9.3 Detection of outliers in ordinal variables 159

9.4 Detection of bivariate ordinal outliers 160

9.5 Detection of multivariate outliers in ordinal regression 161

9.6 Summary 168

References 168

PART II MODERN TECHNIQUES IN CUSTOMER SATISFACTION SURVEY DATA ANALYSIS

10 Statistical inference for causal effects 173
Fabrizia Mealli, Barbara Pacini and Donald B. Rubin

10.1 Introduction to the potential outcome approach to causal inference 173

10.2 Assignment mechanisms 179

10.3 Inference in classical randomized experiments 182

10.4 Inference in observational studies 185

References 190

11 Bayesian networks applied to customer surveys 193
Ron S. Kenett, Giovanni Perruca and Silvia Salini

11.1 Introduction to Bayesian networks 193

11.2 The Bayesian network model in practice 197

11.3 Prediction and explanation 211

11.4 Summary 213

References 213

12 Log-linear model methods 217
Stephen E. Fienberg and Daniel Manrique-Vallier

12.1 Introduction 217

12.2 Overview of log-linear models and methods 218

12.3 Application to ABC survey data 224

12.4 Summary 227

References 228

13 CUB models: Statistical methods and empirical evidence 231
Maria Iannario and Domenico Piccolo

13.1 Introduction 231

13.2 Logical foundations and psychological motivations 233

13.3 A class of models for ordinal data 233

13.4 Main inferential issues 236

13.5 Specification of CUB models with subjects' covariates 238

13.6 Interpreting the role of covariates 240

13.7 A more general sampling framework 241

13.8 Applications of CUB models 244

13.9 Further generalizations 248

13.10 Concluding remarks 251

Acknowledgements 251

References 251

Appendix 255

A program in R for CUB models 255

A.1 Main structure of the program 255

A.2 Inference on CUB models 255

A.3 Output of CUB models estimation program 256

A.4 Visualization of several CUB models in the parameter space 257

A.5 Inference on CUB models in a multi-object framework 257

A.6 Advanced software support for CUB models 258

14 The Rasch model 259
Francesca De Battisti, Giovanna Nicolini and Silvia Salini

14.1 An overview of the Rasch model 259

14.2 The Rasch model in practice 267

14.3 Rasch model software 277

14.4 Summary 278

References 279

15 Tree-based methods and decision trees 283
Giuliano Galimberti and Gabriele Soffritti

15.1 An overview of tree-based methods and decision trees 283

15.2 Tree-based methods and decision trees in practice 300

15.3 Further developments 304

References 304

16 PLS models 309
Giuseppe Boari and Gabriele Cantaluppi

16.1 Introduction 309

16.2 The general formulation of a structural equation model 310

16.3 The PLS algorithm 313

16.4 Statistical interpretation of PLS 319

16.5 Geometrical interpretation of PLS 320

16.6 Comparison of the properties of PLS and LISREL procedures 321

16.7 Available software for PLS estimation 323

16.8 Application to real data: Customer satisfaction analysis 323

References 329

17 Nonlinear principal component analysis 333
Pier Alda Ferrari and Alessandro Barbiero

17.1 Introduction 333

17.2 Homogeneity analysis and nonlinear principal component analysis 334

17.3 Analysis of customer satisfaction 338

17.4 Dealing with missing data 340

17.5 Nonlinear principal component analysis versus two competitors 343

17.6 Application to the ABC ACSS data 344

17.7 Summary 355

References 355

18 Multidimensional scaling 357
Nadia Solaro

18.1 An overview of multidimensional scaling techniques 357

18.2 Multidimensional scaling in practice 374

features: The incomplete data set 383

18.3 Multidimensional scaling in a future perspective 386

18.4 Summary 386

References 387

19 Multilevel models for ordinal data 391
Leonardo Grilli and Carla Rampichini

19.1 Ordinal variables 391

19.2 Standard models for ordinal data 393

19.3 Multilevel models for ordinal data 395

19.4 Multilevel models for ordinal data in practice: An application to student ratings 404

References 408

20 Quality standards and control charts applied to customer surveys 413
Ron S. Kenett, Laura Deldossi and Diego Zappa

20.1 Quality standards and customer satisfaction 413

20.2 ISO 10004 guidelines for monitoring and measuring customer satisfaction 414

20.3 Control Charts and ISO 7870 417

20.4 Control charts and customer surveys: Standard assumptions 420

20.5 Control charts and customer surveys: Non-standard methods 426

20.6 The M-test for assessing sample representation 433

20.7 Summary 435

References 436

21 Fuzzy Methods and Satisfaction Indices 439
Sergio Zani, Maria Adele Milioli and Isabella Morlini

21.1 Introduction 439

21.2 Basic definitions and operations 440

21.3 Fuzzy numbers 441

21.4 A criterion for fuzzy transformation of variables 443

21.5 Aggregation and weighting of variables 445

21.6 Application to the ABC customer satisfaction survey data 446

21.7 Summary 453

References 455

Appendix An introduction to R 457
Stefano Maria Iacus

A.1 Introduction 457

A.2 How to obtain R 457

A.3 Type rather than 'point and click' 458

A.4 Objects 460

A.5 S4 objects 470

A.6 Functions 472

A.7 Vectorization 473

A.8 Importing data from different sources 475

A.9 Interacting with databases 476

A.10 Simple graphics manipulation 477

A.11 Basic analysis of the ABC data 481

A.12 About this document 496

A.13 Bibliographical notes 496

References 496

Index 499
Ron S. Kenett, KPA Ltd., Raanana, Israel, University of Turin, Italy, and NYU-Poly, Center for Risk Engineering, New York, USA

Silvia Salini, Department of Economics, Business and Statistics ,University of Milan, Italy

R. S. Kenett, KPA Ltd., Israel; S. Salini, KPA Ltd