Predictive Analytics for Business using R by Russell R Barton (.PDF)
File Size: 14.5 MB
Predictive Analytics for Business using R by Russell R Barton
Requirements: .PDF reader, 14.5 MB
Overview: The fields of mathematical statistics, statistical graphics, Computer Science and operations research have created the rich set of methods now called Analytics. Often analytics is characterized along three poles: descriptive analytics (what do data tell us), predictive analytics (what can be forecast based on the data, and with what certainty), and prescriptive analytics (how can the data inform changes to improve system performance). This book focuses on the second pole, predictive analytics. The areas of predicting a number, a class, and dynamic behavior are distinct, with different methods. This text has three parts based on these areas. Topics in predicting a number include simple and multiple linear regression, transformation of variables, analysis of observational data via cross-validation, the generalized linear model, designed experiments, and Gaussian process and neural network regression. Classification methods include neural networks, logistic regression, k-nearest neighbor, and linear discriminant analysis. Methods for predicting dynamic behavior include trend analysis, time series analysis and discrete-event dynamic simulation. Characterizing prediction uncertainty is a key focus of this text. The text provides analytic methods appropriate to each area, with an explicit process for applying such methods. The text illustrates the application of predictive analytics methods using the R programming language.
Genre: Non-Fiction > Tech & Devices
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