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Statistics in Industry and Government

  • 1st Edition, Volume 53 - August 6, 2025
  • Latest edition
  • Editors: Ravindra Khattree, Hon Yiu So, Arni S.R. Srinivasa Rao
  • Language: English

Statistics in Industry and Government covers industrial quality control and high-class quality maintenance in products. The book aims to cover as many applications that use statis… Read more

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Description

Statistics in Industry and Government covers industrial quality control and high-class quality maintenance in products. The book aims to cover as many applications that use statistics as an underlying tool in bringing the best quality products and industrial designs. Chapters in this new release include Analysis of Official Time Series with Ecce Signum, an R Package for Multivariate Signal Extraction and Forecasting, The Maturity Structure of Public Debt: A Granular Approach Using Indian Data, Harnessing the power of spherical intersection: A less arbitrary unsupervised learning method applied to pattern recognition within financial data, and much more.

Other chapters in this release include The Use of Causal Inference with Structural Models in Industry, MSME Statistics in India, The Importance of Accurate, Timely, Credible Crime Data to Inform Crime and Justice Policy, Combining Information from Multiple Sources in Official Statistics, Active Learning of Computer Experiment with both Quantitative and Qualitative Inputs, On the use of machine learning methods for missing data problems, Optimal Experimental Planning for Experiments Based on Coherent Systems with Industrial Applications, and more.

Key features

  • Provides an easy to understand accounting of valuable statistics concepts
  • Coverage helps readers easily implement tactics discussed
  • Written by experts in the field who comment on the kinds of benefits both industry and governments can gain using statistical data

Readership

Every effort will be made to get chapters written in a detailed and training fashion rather than typical journal-type articles. We hope to make the volume remain the academic circles for the years and to be used by students and advanced researchers.

Table of contents

1. Analysis of Official Time Series with Ecce Signum, an R Package for Multivariate Signal Extraction and Forecasting
Tucker Sprague McElroy and James Livsey

2. The Maturity Structure of Public Debt: A Granular Approach Using Indian Data
Chetan Ghate, Piyali Das and Subhadeep Halder

3. Harnessing the power of spherical intersection: A less arbitrary unsupervised learning method applied to pattern recognition within financial data
Michel Ferreira Cardia Haddad

4. The Use of Causal Inference with Structural Models in Industry
Takashi Isozaki

5. MSME Statistics in India
Poonam Munjal, Palash Baruah and sanjib pohit

6. The Importance of Accurate, Timely, Credible Crime Data to Inform Crime and Justice Policy
Alex R. R. Piquero

7. Combining Information from Multiple Sources in Official Statistics
Changbao Wu

8. Active Learning of Computer Experiment with both Quantitative and Qualitative Inputs
Chunfang Devon Lin, Xinwei Deng and Anita Shahrokhian

9. On the use of machine learning methods for missing data problems
Sixia Chen

10. Optimal Experimental Planning for Experiments Based on Coherent Systems with Industrial Applications
Hon Keung Tony Ng, Erhard Cramer and Yang Yu

11. An overview of models for one-shot device testing data analysis.
Man Ho Ling

12. TBA
Qing Yin

13. TBA
Ram C. Tiwari, JIXIAN WANG and Hongtao Zhang

14. Statistical Innovation: Transforming Pharmaceutical Research and Development
Pandurang M. Kulkarni, Wei Shen, Demissie Alemayehu and Yongming Qu

Product details

  • Edition: 1
  • Latest edition
  • Volume: 53
  • Published: August 29, 2025
  • Language: English

About the editors

RK

Ravindra Khattree

Ravindra Khattree is a distinguished professor of statistics at Oakland University, U.S.A. and a co-director of the Center for Data Science and Big Data Analytics at the same university. In 1985, he earned a doctorate from the University of Pittsburgh with Calyampudi Radhakrishna Rao as his advisor. His contribution to the Fountain–Khattree–Peddada Theorem in Pitman measure of closeness is one of the important results of his work. Khattree is the coauthor of two books and has coedited two volumes. He has served as an associate editor of the Communications in Statistics journal. He was Chief editor of Journal of Statistics and Applications for more than ten years. He is an elected fellow of the American Statistical Association. In 2002, Khattree received the Young Researcher Award from the International Indian Statistical Association. Khattree was honored with a fellowship in the American Statistical Association in 2003 and became an elected member of the International Statistical Institute in 2004. He is also a recipient of Oakland University Research Excellence Award (2008).

Affiliations and expertise
Oakland University, USA, and Medical College of Georgia, Augusta, USA

HS

Hon Yiu So

Dr. Hon Yiu So is an Assistant Professor in the Department of Mathematics and Statistics at Oakland University. He received his Ph.D. in Mathematics with a concentration in Statistics from McMaster University in 2016. Dr. So's research lies at the intersection of reliability analysis, survey sampling, machine learning, and missing data methodologies. He has authored or co-authored over 25 peer-reviewed journal articles and book chapters in these fields. He is the co-author of the monograph Accelerated Life Testing of One-Shot Devices: Data Collection and Analysis. His work has contributed to both theoretical advancement and practical application in statistical science, particularly in the context of reliability engineering and public health research.

Affiliations and expertise
Assistant Professor, Department of Mathematics and Statistics, Oakland University, USA

AS

Arni S.R. Srinivasa Rao

Arni S.R. Srinivasa Rao works in pure mathematics, applied mathematics, probability, artificial

intelligence and applications in medicine. He developed the concept of “Exact Deep Learning Machines”, which can provide designs for accurate predictions without any uncertainty. He had edited these handbooks jointly with renowned statistician Dr. C. R. Rao. He is a Professor at the Medical College of Georgia, Augusta University, U.S.A., and the Director of the Laboratory for Theory and Mathematical Modeling housed within the Division of Infectious Diseases, Medical College of Georgia, Augusta, U.S.A. Previously, Dr. Rao conducted research and/or taught at the Mathematical Institute, University of Oxford (2003, 2005-07), Indian Statistical Institute (1998-2002, 2006-2012), Indian Institute of Science (2002-04), University of Guelph (2004-06). Until 2012, Dr. Rao held a permanent faculty position at the Indian Statistical Institute. He has won the Heiwa-Nakajima Award (Japan) and Fast Track Young Scientists Fellowship in Mathematical Sciences (DST, New Delhi). Dr. Rao also proved a major theorem in stationary population models, such as, Rao’s Partition Theorem inPopulations, Rao-Carey Theorem in stationary populations, and developed mathematical modeling-based policies for the spread of diseases like HIV, H5N1, COVID-19, etc. He developed a new set of network models for understanding avian pathogen biology on grid graphs (these were called chicken walk models), AI Models for COVID-19, and received wide coverage in the science media. Dr. Rao is an elected Fellow of ISMMACS (Indian Society for Mathematical Modeling and Computer Simulation), and ISPS (Indian Society for Probability and Statistics). He developed concepts such as “Multilevel Contours within a bundle of Complex Number Planes”.

Affiliations and expertise
Medical College of Georgia, Augusta, U.S.A.

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