Limit search to available items
Book Cover
E-book
Author McCarthy, Richard V., author

Title Applying predictive analytics : finding value in data / Richard V. McCarthy, Mary M. McCarthy, Wendy Ceccucci, Leila Halawi
Published Cham, Switzerland : Springer, 2019

Copies

Description 1 online resource (x, 205 pages)
Contents Introduction to Predictive Analytics -- Know Your Data -- Data Preparation -- What do Descriptive Statistics Tell Us -- The First of the Big Three -- Regression -- The Second of the Big Three -- Decision Trees -- The Third of the Big Three -- Neural Networks -- Model Comparisons and Scoring -- Appendix A -- Data Dictionary for the Automobile Insurance Claim Fraud Data Example -- Conclusion
Summary This textbook presents a practical approach to predictive analytics for classroom learning. It focuses on using analytics to solve business problems and compares several different modeling techniques, all explained from examples using the SAS Enterprise Miner software. The authors demystify complex algorithms to show how they can be utilized and explained within the context of enhancing business opportunities. Each chapter includes an opening vignette that provides real-life example of how business analytics have been used in various aspects of organizations to solve issue or improve their results. A running case provides an example of a how to build and analyze a complex analytics model and utilize it to predict future outcomes. Focuses on how to use predictive analytic techniques to analyze historical data for the purpose of predicting future results; Takes an applied approach and focus on solving business problems using predictive analytics and features case studies and a variety of examples; Uses examples in SAS Enterprise Miner, one of world's leading analytics software tools
Bibliography Includes bibliographical references and index
Notes Online resource; title from PDF title page (SpringerLink, viewed March 27, 2019)
Subject Enterprise miner -- Textbooks
Enterprise miner.
Data mining.
SAS (Computer program language)
Data Mining
Data mining.
SAS (Computer program language)
Genre/Form Textbooks.
Textbooks.
Form Electronic book
Author McCarthy, Mary M., author
Ceccucci, Wendy, author
Halawi, Leila, author
ISBN 9783030140380
3030140385
9783030140397
3030140393
9783030140403
3030140407