Contemporary Perspectives in Data Mining

Kenneth D. Lawrence|Ronald K. Klimberg
Emerald
Emerald

This book can be opened with

Glassboxx eBooks and audiobooks can be opened on phones, tablets, iOS and Android devices

Paperback / softback
9781648021435
15 October 2020
£40.00
Hardback
9781648021442
15 October 2020
£75.00
eBook (PDF)
9781648021459
15 October 2020
£40.00
eBook (ePub)
9781806604982
15 October 2020
£40.00

Note on our eBooks and Audiobooks: you can read our eBooks (ePUB or PDF) and listen to audiobooks on the free Emerald Books app on iOS, Android, and desktop. Or read and listen on Emerald's online reader (ePUB eBooks and audiobooks only). To purchase a digital book you will need to create an account if you don’t already have one. After purchasing you will receive instructions on how to get started.

  • Description
  • Contents

The series, Contemporary Perspectives on Data Mining, is composed of blind refereed scholarly research methods and applications of data mining. This series will be targeted both at the academic community, as well as the business practitioner.

Data mining seeks to discover knowledge from vast amounts of data with the use of statistical and mathematical techniques. The knowledge is extracted from this data by examining the patterns of the data, whether they be associations of groups or things, predictions, sequential relationships between time order events or natural groups.

Data mining applications are in business (banking, brokerage, and insurance), marketing (customer relationship, retailing, logistics, and travel), as well as in manufacturing, health care, fraud detection, homeland security and law enforcement.

Section I. Forecasting and Data Mining.

  • Chapter 1. Combining Forecasting Methods: Predicting Quarterly Sales in 2019 for Motorola Solutions; Kenneth D. Lawrence, Stephan Kudyba, and Sheila M. Lawrence.
  • Chapter 2. Bayesian Deep Generative Machine Learning for Real Exchange Rate Forecasting; Mark T. Leung, Shaotao Pan, and An-Sing Chen.
  • Chapter 3. Predicting Hospital Admissions and Surgery Based on Fracture Severity: An Exploratory Study; Aishwarya Mohanakrishnan, Dinesh R. Pai, and Girish H. Subramanian.
  • Section II. Business Intelligence And Optimization.
  • Chapter 4. Business Intelligence and the Millennials: Data Driven Strategies for America's Largest Generation; Joel Thomas Asay, Gregory Smith, and Jamie Pawlieukwicz.
  • Chapter 5. Data Driven Portfolio Optimization With Drawndown Constraints Using Machine Learning; Meng-Chen Hsieh.
  • Chapter 6. Mining for Fitness: Analytical Models That Fit You So You Can Be Fit; William Asterino and Kathleen Campbell.
  • Section III. Business Applications Of Data Mining.
  • Chapter 7. H Index Weighted by Eigenfactors of Citations for Journal Evaluation; Cuihua Hu, Feng Yang, Xiya Zu, and Zhimin Huang.
  • Chapter 8. A Method to Determine the Size of the Resampled Data in Imbalanced Classification; Matthew Bonas, Son Nguyen, Alan Olinsky, John Quinn, and Phyllis Schumacher.
  • Chapter 9. Performance Measure Analysis of the American Water Work Company by Statistical Clustering; Kenneth D. Lawrence, Stephen K. Kudbya, and Sheila M. Lawrence.
  • About the Authors.