Modern Industrial Statistics Modern Industrial Statistics

Modern Industrial Statistics

With Applications in R, MINITAB, and JMP

    • ¥15,800
    • ¥15,800

発行者による作品情報

Modern Industrial Statistics
The new edition of the prime reference on the tools of statistics used in industry and services, integrating theoretical, practical, and computer-based approaches

Modern Industrial Statistics is a leading reference and guide to the statistics tools widely used in industry and services. Designed to help professionals and students easily access relevant theoretical and practical information in a single volume, this standard resource employs a computer-intensive approach to industrial statistics and provides numerous examples and procedures in the popular R language and for MINITAB and JMP statistical analysis software. Divided into two parts, the text covers the principles of statistical thinking and analysis, bootstrapping, predictive analytics, Bayesian inference, time series analysis, acceptance sampling, statistical process control, design and analysis of experiments, simulation and computer experiments, and reliability and survival analysis. Part A, on computer age statistical analysis, can be used in general courses on analytics and statistics. Part B is focused on industrial statistics applications.

The fully revised third edition covers the latest techniques in R, MINITAB and JMP, and features brand-new coverage of time series analysis, predictive analytics and Bayesian inference. New and expanded simulation activities, examples, and case studies—drawn from the electronics, metal work, pharmaceutical, and financial industries—are complemented by additional computer and modeling methods. Helping readers develop skills for modeling data and designing experiments, this comprehensive volume:
Explains the use of computer-based methods such as bootstrapping and data visualizationCovers nonstandard techniques and applications of industrial statistical process control (SPC) chartsContains numerous problems, exercises, and data sets representing real-life case studies of statistical work in various business and industry settingsIncludes access to a companion website that contains an introduction to R, sample R code, csv files of all data sets, JMP add-ins, and downloadable appendicesProvides an author-created R package, mistat, that includes all data sets and statistical analysis applications used in the book
Part of the acclaimed Statistics in Practice series, Modern Industrial Statistics with Applications in R, MINITAB, and JMP, Third Edition, is the perfect textbook for advanced undergraduate and postgraduate courses in the areas of industrial statistics, quality and reliability engineering, and an important reference for industrial statisticians, researchers, and practitioners in related fields. The mistat R-package is available from the R CRAN repository.

ジャンル
科学/自然
発売日
2021年
5月18日
言語
EN
英語
ページ数
880
ページ
発行者
Wiley
販売元
John Wiley & Sons, Inc.
サイズ
751
MB
Design of Experiments for Reliability Achievement Design of Experiments for Reliability Achievement
2022年
Statistical Data Analytics Statistical Data Analytics
2015年
Introduction to Statistical Analysis of Laboratory Data Introduction to Statistical Analysis of Laboratory Data
2015年
Reliability Analysis for Asset Management of Electric Power Grids Reliability Analysis for Asset Management of Electric Power Grids
2018年
Bayesian Methods for Management and Business Bayesian Methods for Management and Business
2014年
Quantitative Techniques in Business, Management and Finance Quantitative Techniques in Business, Management and Finance
2016年
Multivariate Quality Control Multivariate Quality Control
1998年
Process Improvement and CMMI� for Systems and Software Process Improvement and CMMI� for Systems and Software
2010年
Systems Engineering in the Fourth Industrial Revolution Systems Engineering in the Fourth Industrial Revolution
2020年
The Real Work of Data Science The Real Work of Data Science
2019年
Analytic Methods in Systems and Software Testing Analytic Methods in Systems and Software Testing
2018年
Information Quality Information Quality
2016年