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Simulation for Data Science with R

You're reading from   Simulation for Data Science with R Effective Data-driven Decision Making

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Product type Paperback
Published in Jun 2016
Publisher Packt
ISBN-13 9781785881169
Length 398 pages
Edition 1st Edition
Languages
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Author (1):
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Matthias Templ Matthias Templ
Author Profile Icon Matthias Templ
Matthias Templ
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Table of Contents (13) Chapters Close

Preface 1. Introduction 2. R and High-Performance Computing FREE CHAPTER 3. The Discrepancy between Pencil-Driven Theory and Data-Driven Computational Solutions 4. Simulation of Random Numbers 5. Monte Carlo Methods for Optimization Problems 6. Probability Theory Shown by Simulation 7. Resampling Methods 8. Applications of Resampling Methods and Monte Carlo Tests 9. The EM Algorithm 10. Simulation with Complex Data 11. System Dynamics and Agent-Based Models Index

The parametric bootstrap


Generally speaking, when we have a properly specified model, simulating from the model often provides reliable estimates even with smaller number of replicates than the non-parametric bootstrap. However, if the parametric model is mis-specified, the solution converges to the wrong distribution. Thus, when using the parametric bootstrap, the assumptions must hold.

We would like to show an application of the parametric bootstrap to show the properties of this method. Suppose that we have information that allow us to conclude that the two variables income and prestige in the dataset Prestige (package car) are drawn from a bivariate normal distribution – this is the model here to be assumed. We now estimate the mean and covariance from the empirical data and draw from the theoretical normal distribution with the corresponding parameter values of the empirical data:

## MASS needed for drawing random numbers from multivariate normal
library("MASS")
## parameters from empirical...
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