
Risk and Predictive Analytics in Business with R
Description
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Chapter 1 of this book deals with classification of risks. It includes a typical supply chain example published in academic literature. Chapter 2 gives a brief introduction to R programming. It is not intended to be comprehensive, but sufficient for a user to get started using this free open source and highly popular analytics tool. Chapter 3 discusses risks commonly found in finance, to include basic data mining tools applied to analysis of credit card fraud data. Like the other datasets used in the book, this data comes from the Kaggle.com site, a free site loaded with realistic datasets.
The remainder of the book covers risk analytics tools. Chapter 4 presents R association rule modeling using a supply chain related dataset. Chapter 5 presents Monte Carlo simulation of some supply chain risk situations. Chapter 6 gives both time series and multiple regression prediction models as well as autoregressive integrated moving average (ARIMA; Box-Jenkins) models in SAS and R. Chapter 7 covers classification models demonstrated with credit risk data. Chapter 8 deals with fraud detection and the common problem of modeling imbalanced datasets. Chapter 9 introduces Naive Bayes modeling with categorical data using an employee attrition dataset.
Features:
Overview of predictive analytics presented in an understandable manner
Presentation of useful business applications of predictive data mining
Coverage of risk management in finance, insurance, and supply chain contexts
Presentation of predictive models
Demonstration of using these predictive models in R
Screenshots enabling readers to develop their own models
The purpose of the book is to present tools useful to analyze risks, especially those faced in supply chain management and finance.
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Persons
David L. Olson is the James and H.K. Stuart Chancellor's Distinguished Chair in the Department of Supply Chain Management and Analytics at the University of Nebraska-Lincoln. His research interests are data mining, knowledge management, multiple criteria decision-making, and simulation modeling.
Content
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