Update cookies preferences

E-book: Integrative Approaches to Quality, Data Analysis, and Interdisciplinary Research

Edited by , Edited by
  • Format: PDF+DRM
  • Pub. Date: 16-Jun-2026
  • Publisher: Apple Academic Press Inc.
  • Language: eng
  • ISBN-13: 9781040903346
  • Format - PDF+DRM
  • Price: 195,00 €*
  • * the price is final i.e. no additional discount will apply
  • This ebook in not yet published. You can order it after: 16-Jun-2026
  • Add to Wishlist
  • This ebook is for personal use only. E-Books are non-refundable.
  • Format: PDF+DRM
  • Pub. Date: 16-Jun-2026
  • Publisher: Apple Academic Press Inc.
  • Language: eng
  • ISBN-13: 9781040903346

DRM restrictions

  • Copying (copy/paste):

    not allowed

  • Printing:

    not allowed

  • Usage:

    Digital Rights Management (DRM)
    The publisher has supplied this book in encrypted form, which means that you need to install free software in order to unlock and read it.  To read this e-book you have to create Adobe ID More info here. Ebook can be read and downloaded up to 6 devices (single user with the same Adobe ID).

    Required software
    To read this ebook on a mobile device (phone or tablet) you'll need to install this free app: PocketBook Reader (iOS / Android)

    To download and read this eBook on a PC or Mac you need Adobe Digital Editions (This is a free app specially developed for eBooks. It's not the same as Adobe Reader, which you probably already have on your computer.)

    You can't read this ebook with Amazon Kindle

Offers methods for data analysis and interdisciplinary research, including statistical methods, CUSUM control charts, Poisson models, Bayesian approach, software programs, ML algorithms, big data, and more for addressing complex challenges in areas including environmental problems, healthcare, agriculture, and more.



Offering a wide range of case studies, this new book highlights the practical applications of integrating quality management, data analysis, and multidisciplinary research for solving urgent environmental challenges, improving public health and company operations, and more. By bridging the gap between theory and practice, it emphasizes the transformative power of data and interdisciplinary approaches in addressing complex challenges and driving innovation.

This book highlights many methods and applications for data analysis and interdisciplinary research, including various statistical methods, CUSUM (Cumulative Sum) control charts, Poisson distribution models, the Bayesian approach, software programs like Mathematica, machine learning algorithms, big data, and more. The book applies data analysis approaches in addressing complex challenges in many areas, including for environmental problems such as measuring air pollution; in socioeconomic issues like insurance costs and dynamics; in healthcare such as for analyzing epidemiological data (such as from the COVID-19 pandemic); in the agricultural sector, such as to understand and forecast agricultural trends and to enhance agricultural sustainability; and more.

Preface Introduction PART I: DATA-DRIVEN ANALYSIS IN VARIOUS SECTORS
1.
Machine Learning Algorithms for Covid-19 Data Analysis with Python
2.
Analysis of Air Pollution in Delhi Using Machine Learning Techniques
3.
Modeling Socioeconomic and Regional Factors in the Nonlife Insurance Sector
of India Through Regression Analysis
4. Quantitative Analysis of Healthcare
Costs: Integrating Behavioral, Regional, and Demographic Factors
5. A
Time-Series Analysis of Lemon Production in Ten Major Cities of India PART
II: INTERDISCIPLINARY STUDIES IN AGRICULTURE, EDUCATION, AND HISTORY
6.
Optimizing Water Management for Sustainable Agriculture: A Multidisciplinary
Approach
7. Factor Analysis for Attention Deficit Hyperactivity Disorder
Symptoms Questionnaires (Adult ADHD Self-Report Scale V1.1) Among HEI
Learners
8. History of Mathematics in Africa, from Ancient Mathematics to
Modern Data Science: Africa Legacy and Future
9. Exploring Decentralized
Inventory Strategies: A Study PART III: ADVANCED TECHNIQUES IN QUALITY AND
RISK MANAGEMENT
10. Advancing Quality Management: Exploring the Power of
CUSUM Control Charts in Process Monitoring and Improvement
11. Premium
Precision: A Bayesian Approach Using Poisson and Exponential Models in
Insurance Risk Assessment
12. Optimizing Supply Chain Efficiency with
Mathematica Mathematical and Statistical Methods for Finite Planning Horizons
Index
Amir Ahmad Dar, PhD, is an Assistant Professor in the Department of Statistics at Lovely Professional University in India. Dr. Dar has an impressive academic portfolio, having published research papers and book chapters. He has presented his work at national and international conferences. His research interests include actuarial statistics, experimental design, financial derivatives, and financial mathematics. He completed his BSc in Actuarial and Financial Mathematics at the Islamic University of Science and Technology in Awantipora, India. He pursued his MSc and PhD in Actuarial Science at B S Abdur Rahman University in Chennai, India.

Waseem Z. Lone, PhD, is currently a Research Associate at the Indian Institute of Technology, Patna, India. His research focuses on Fourier and wavelet analysis. He has published papers in various esteemed international journals. Dr. Lone also served as an Assistant Professor at Lovely Professional University, Punjab, India, and has been awarded a prestigious fellowship funded by the Council of Scientific & Industrial Research (CSIR), Government of India. He earned his masters and PhD degrees in Mathematics from the University of Kashmir, India.