Introduction to Scientific Programming and Simulation Using R

Regular price €100.99
Quantity:
In stock with our UK publisher. 14-28 days
Delivery/Collection within 10-20 working days
14 days return policy Shipping & Delivery
A01=Andrew Robinson
A01=Owen Jones
A01=Robert Maillardet
Adaptive Quadrature
adaptive Runge-Kutta algorithm
And Optimisation
Antithetic Variates
Author_Andrew Robinson
Author_Owen Jones
Author_Robert Maillardet
Build Statistical Intuition
Category=UFM
Continuous Time
Continuous Time Markov Chain
Cumulative Distribution Function
Discrete Random Variables
Discrete Time Markov Chain
discrete time simulation
eq_bestseller
eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
expectation calculation
FALSE FALSE
FALSE TRUE FALSE FALSE FALSE
Fixed Point Method
Grand Fir
Iid Sample
Importance Sampling
Learn Programming By Experimenting With The R Code
Markov Chain
Markov chain analysis
Markov Chains
Mathematics From A Numerical Point Of View
Midpoint Scheme
Monte Carlo Integration
Numerical Integration
numerical optimization methods
Ordinary Differential Equations
Program spuRs
Program Stochastic Models
Random Number Generation And Monte Carlo Integration
random variable modeling
RK4 Scheme
Root Finding
Rosenbrock Function
Scientific Programming And Stochastic Modelling
Simpson's Rule
Simpson’s Rule
Simulating Discrete- And Continuous-Time Chains
Solving Systems Of Ordinary Differential Equations
State Transition Diagram
stochastic differential equation programming
Transition Matrix
Transition Rate Diagram
User Defined Functions

Product details

  • ISBN 9781466569997
  • Weight: 1000g
  • Dimensions: 156 x 234mm
  • Publication Date: 12 Jun 2014
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
Secure checkout Fast Shipping Easy returns

Learn How to Program Stochastic Models

Highly recommended, the best-selling first edition of Introduction to Scientific Programming and Simulation Using R was lauded as an excellent, easy-to-read introduction with extensive examples and exercises. This second edition continues to introduce scientific programming and stochastic modelling in a clear, practical, and thorough way. Readers learn programming by experimenting with the provided R code and data.

The book’s four parts teach:

  • Core knowledge of R and programming concepts
  • How to think about mathematics from a numerical point of view, including the application of these concepts to root finding, numerical integration, and optimisation
  • Essentials of probability, random variables, and expectation required to understand simulation
  • Stochastic modelling and simulation, including random number generation and Monte Carlo integration

In a new chapter on systems of ordinary differential equations (ODEs), the authors cover the Euler, midpoint, and fourth-order Runge-Kutta (RK4) schemes for solving systems of first-order ODEs. They compare the numerical efficiency of the different schemes experimentally and show how to improve the RK4 scheme by using an adaptive step size.

Another new chapter focuses on both discrete- and continuous-time Markov chains. It describes transition and rate matrices, classification of states, limiting behaviour, Kolmogorov forward and backward equations, finite absorbing chains, and expected hitting times. It also presents methods for simulating discrete- and continuous-time chains as well as techniques for defining the state space, including lumping states and supplementary variables.

Building readers’ statistical intuition, Introduction to Scientific Programming and Simulation Using R, Second Edition shows how to turn algorithms into code. It is designed for those who want to make tools, not just use them. The code and data are available for download from CRAN.

Owen Jones, Robert Maillardet, Andrew Robinson

More from this author