Biomedical and Business Applications Using Artificial Neural Networks and Machine Learning

Biomedical and Business Applications Using Artificial Neural Networks and Machine Learning

Release Date: January, 2022|Copyright: © 2022 |Pages: 394
DOI: 10.4018/978-1-7998-8455-2
ISBN13: 9781799884552|ISBN10: 1799884554|EISBN13: 9781799884576
Hardcover:
Available
$270.00
TOTAL SAVINGS: $270.00
Benefits
  • Printed-On-Demand (POD)
  • Usually ships one day from order
Hardcover:
Available
$270.00
TOTAL SAVINGS: $270.00
Benefits
  • Printed-On-Demand (POD)
  • Usually ships one day from order
E-Book:
Available
$270.00
TOTAL SAVINGS: $270.00
Benefits
  • Multi-user license (no added fee)
  • Immediate access after purchase
  • No DRM
  • PDF download
E-Book:
Available
$270.00
TOTAL SAVINGS: $270.00
Benefits
  • Immediate access after purchase
  • No DRM
  • PDF download
  • Receive a 10% Discount on eBooks
Hardcover +
E-Book:
Available
$325.00
TOTAL SAVINGS: $325.00
Benefits
  • Printed-On-Demand (POD)
  • Usually ships one day from order
  • Multi-user license (no added fee)
  • Immediate access after purchase
  • No DRM
  • PDF download
Hardcover +
E-Book:
Available
$325.00
TOTAL SAVINGS: $325.00
Benefits
  • Printed-On-Demand (POD)
  • Usually ships one day from order
  • Immediate access after purchase
  • No DRM
  • PDF download
OnDemand:
(Individual Chapters)
Available
$37.50
TOTAL SAVINGS: $37.50
Benefits
  • Purchase individual chapters from this book
  • Immediate PDF download after purchase or access through your personal library
Effective immediately, IGI Global has discontinued softcover book production. The softcover option is no longer available for direct purchase.
Description & Coverage
Description:

During these uncertain and turbulent times, intelligent technologies including artificial neural networks (ANN) and machine learning (ML) have played an incredible role in being able to predict, analyze, and navigate unprecedented circumstances across a number of industries, ranging from healthcare to hospitality. Multi-factor prediction in particular has been especially helpful in dealing with the most current pressing issues such as COVID-19 prediction, pneumonia detection, cardiovascular diagnosis and disease management, automobile accident prediction, and vacation rental listing analysis. To date, there has not been much research content readily available in these areas, especially content written extensively from a user perspective.

Biomedical and Business Applications Using Artificial Neural Networks and Machine Learning is designed to cover a brief and focused range of essential topics in the field with perspectives, models, and first-hand experiences shared by prominent researchers, discussing applications of artificial neural networks (ANN) and machine learning (ML) for biomedical and business applications and a listing of current open-source software for neural networks, machine learning, and artificial intelligence. It also presents summaries of currently available open source software that utilize neural networks and machine learning. The book is ideal for professionals, researchers, students, and practitioners who want to more fully understand in a brief and concise format the realm and technologies of artificial neural networks (ANN) and machine learning (ML) and how they have been used for prediction of multi-disciplinary research problems in a multitude of disciplines.

Coverage:

The many academic areas covered in this publication include, but are not limited to:

  • Applications of Machine Learning Methods
  • Applications of Neural Networks and Machine Learning to COVID-19 Predictions
  • Artificial Neural Networks
  • Cardiovascular Applications of Artificial Intelligence
  • Deep Learning Models
  • Deep Neural Networks
  • Image Identification and Damage Estimation Through Convolutional Neural Network
  • Machine Learning Methods Comparison for Unemployment Rate Prediction
  • Machine Learning Techniques
  • Multilayer Perceptron Neural Network
  • Neural Networks
  • Open Source Software
  • Protein-Protein Interactions via Deep Neural Network
Reviews & Statements

"The book Biomedical and Business Applications Using Artificial Neural Networks and Machine Learning edited by Dr. Richard S. Segall and Dr. Gao Niu meets the challenges in the era of big data and is timely for utilizing Artificial Intelligence (AI) and machine learning techniques to advance biomedical and business data analytics. This book keeps pace with the rapid advancements in machine learning, business analytics, data tools and infrastructure, and practices that can help solve real-world problems. It is perceivably beneficial for data scientists, biomedical researchers and industry users to understand the latest state-of-art algorithms and apply these techniques to facilitate business management and operation, and biomedical research and clinical applications. The book covers a wide spectrum of machine learning and AI algorithms and open-source software in chapter 1, biomedical applications in chapters 2-7, and business applications in chapters 8-13. In particular, chapter 2 and chapter 6 present AI and deep-learning models for COVID-19 prediction and diagnosis, which is just-in-time to tackle the critical challenges posed by COVID-19 pandemic that currently have created profound impacts on human health and economic growth worldwide. I believe a broad range of researchers, professionals and students will find this book useful. I highly recommend this book to the communities of machine learning, biomedical research, data analytics and business intelligence. "

– Mary Yang, Ph.D., Professor of Engineering and Information Science Director of MidSouth Bioinformatics Center and Joint Bioinformatics Graduate Programs of University of Arkansas at Little Rock (UALR); University of Arkansas for Medical Sciences (UAMS)
Table of Contents
Search this Book:
Reset
Editor/Author Biographies

Dr. Richard S. Segall is Professor of Information Systems & Business Analytics in the Neil Griffin College of Business at Arkansas State University in Jonesboro, AR where has also taught for ten years in the Master of Engineering Management (MEM) Program in the College of Engineering & Computer Science. He is also Affiliated Faculty at the University of Arkansas at Little Rock (UALR) where he serves on thesis committees. He holds a Bachelor of Science and Master of Science in Mathematics as well as a Master of Science in Operations Research and Statistics from Rensselaer Polytechnic Institute in Troy, New York. He also holds a PhD in Operations Research form University of Massachusetts at Amherst, He has served on the faculty of Texas Tech University, University of Louisville, University of New Hampshire, University of Massachusetts-Lowell, and West Virginia University. His research interests include data mining, Big Data, text mining, web mining, database management, and mathematical modeling.

Dr. Segall‘s publications have appeared in numerous journals including International Journal of Information Technology and Decision Making (IJITDM), International Journal of Information and Decision Sciences (IJIDS), Applied Mathematical Modelling (AMM), Kybernetes, Journal of the Operational Research Society (JORS), Journal of Systemics, Cybernetics and Informatics (JSCI), International Journal of Artificial Intelligence and Machine Learning (IJAIML), International Journal of Open Source Software and Processes (IJOSSP), and International Journal of Fog Computing (IJFC). He has published book chapters in Encyclopedia of Data Warehousing and Mining, Handbook of Computational Intelligence in Manufacturing and Production Management,Handbook of Research on Text and Web Mining Technologies, Encyclopedia of Information Science & Technology, and Encyclopedia of Business Analytics & Optimization.

Dr. Segall was a member of the former Arkansas Center for Plant-Powered-Production (P3), and is a member of the Center for No-Boundary Thinking (CNBT), and on the Editorial Board of theInternational Journal of Data Mining, Modelling and Management (IJDMMM)) and International Journal of Data Science (IJDS), and served as Local Arrangements Chair of the MidSouth Computational Biology & Bioinformatics Society (MCBIOS) Conference that was hosted at Arkansas State University.

His research has been funded by National Research Council (NRC), U.S. Air Force (USAF), National Aeronautical and Space Administration (NASA), Arkansas Biosciences Institute (ABI), and Arkansas Science & Technology Authority (ASTA). He is recipient of several Session Best Paper awards at World Multi-Conference on Systemics, Cybernetics and Informatics (WMSCI) conferences. Dr.Segall is Lead Editor of several IGI Global books of: Biomedical and Business Applications using Artificial Neural Networks and Machine Learning, Open Source Software for Statistical Analysis of Big Data, Handbook of Big Data Storage and Visualization Techniques (2 volumes), and Research and Applications in Global Supercomputing, and is co-editor of Visual Analytics and Interactive Technologies: Data, Text and Web Mining Applications. Dr. Segall is recipient of Arkansas State University, Neil Griffin College of Business Faculty Award for Excellence in Research in 2015 and 2019, and the 2020 University Award in Scholarship (Research) of Arkansas State University.

Gao Niu is an Assistant Professor in Actuarial Science and Program Coordinator of Actuarial Math Program at Bryant University. He also serves as the Faculty Consultant of the Janet & Mark L Goldenson Center for Actuarial Research at the University of Connecticut. He has a doctorate in actuarial science from the University of Connecticut, is an Associate of the Casualty Actuarial Society and a Member of the American Academy of Actuaries. Dr. Niu has years of experience in academic actuarial research and consulting practice. His research area includes but not limited to the following: big data analytics application in insurance industry, property and casualty insurance practice, predictive modeling, agent-based modeling, financial planning, life insurance and health insurance pricing, reserving and data mining.

Archiving
All of IGI Global's content is archived via the CLOCKSS and LOCKSS initiative. Additionally, all IGI Global published content is available in IGI Global's InfoSci® platform.