Six Sigma with R: Statistical Engineering for Process Improvement

Portada
Springer Science & Business Media, 4 jul 2012 - 284 páginas

Six Sigma has arisen in the last two decades as a breakthrough Quality Management Methodology. With Six Sigma, we are solving problems and improving processes using as a basis one of the most powerful tools of human development: the scientific method. For the analysis of data, Six Sigma requires the use of statistical software, being R an Open Source option that fulfills this requirement. R is a software system that includes a programming language widely used in academic and research departments. Nowadays, it is becoming a real alternative within corporate environments.

The aim of this book is to show how R can be used as the software tool in the development of Six Sigma projects. The book includes a gentle introduction to Six Sigma and a variety of examples showing how to use R within real situations. It has been conceived as a self contained piece. Therefore, it is addressed not only to Six Sigma practitioners, but also to professionals trying to initiate themselves in this management methodology. The book may be used as a text book as well.

 

Índice

Part I Basics
2
Part II R Tools for the Define Phase
48
Part III R Tools for the Measure Phase
76
Part IV R Tools for the Analyze Phase
113
Part V R Tools for the Improve Phase
194
Part VI R Tools for the Control Phase
216
Part VII Further and Beyond
239
Appendix A R Basic Reference Guide
250
References
261
Solutions
267
R Packages and Functions Used in the Book
274
Subject Index
279
Página de créditos

Otras ediciones - Ver todo

Términos y frases comunes

Sobre el autor (2012)

Emilio L. Cano is Adjunct Lecturer at the Department of Mathematics at University of Castilla-La Mancha and Research Assistant Professor at the Department of Statistics and Operations Research at University Rey Juan Carlos.

Javier M. Moguerza is Associate Professor in Statistics and Operations Research at University Rey Juan Carlos and member of the Global Young Academy.

Andres Redchuk is Master Black Belt and Research Assistant Professor at the Department of Statistics and Operations Research at University Rey Juan Carlos.

Información bibliográfica