Introduction to Probability with Mathematica

Regular price €223.20
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A01=Kevin J. Hastings
absorbing Markov chains
Actuarial Exam
advanced probability simulations
Author_Kevin J. Hastings
Bivariate Normal Density
Bivariate Normal Distribution
Borel Sets
Borel Subsets
Brownian Motion
Category=PBT
Category=PBWL
Category=UMJ
central
Central Limit Theorem
Conditional Expectation
Continuous Random Variables
convergence
Cumulative Distribution Function
Data Set
Discrete Random Variables
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eq_nobargain
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financial mathematics
Geometric Brownian Motion
IBM Stock
Joint Density
Joint Probability Mass Function
law
limit
Markov Chain
Mathematic Act Score
mean
Negative Binomial
pierre
place
Poisson Process
probabilistic modeling
Random Variables
S2 ?2
S2 Σ2
sample
Sample Space
simulation techniques
statistical inference
stochastic analysis
theorem
Transition Matrix
weak
Σx Σy

Product details

  • ISBN 9781420079388
  • Weight: 1030g
  • Dimensions: 156 x 234mm
  • Publication Date: 21 Sep 2009
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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Updated to conform to Mathematica® 7.0, Introduction to Probability with Mathematica®, Second Edition continues to show students how to easily create simulations from templates and solve problems using Mathematica. It provides a real understanding of probabilistic modeling and the analysis of data and encourages the application of these ideas to practical problems. The accompanyingdownloadable resources offer instructors the option of creating class notes, demonstrations, and projects.

New to the Second Edition



  • Expanded section on Markov chains that includes a study of absorbing chains


  • New sections on order statistics, transformations of multivariate normal random variables, and Brownian motion


  • More example data of the normal distribution


  • More attention on conditional expectation, which has become significant in financial mathematics


  • Additional problems from Actuarial Exam P


  • New appendix that gives a basic introduction to Mathematica


  • New examples, exercises, and data sets, particularly on the bivariate normal distribution


  • New visualization and animation features from Mathematica 7.0


  • Updated Mathematica notebooks on the downloadable resources.


After covering topics in discrete probability, the text presents a fairly standard treatment of common discrete distributions. It then transitions to continuous probability and continuous distributions, including normal, bivariate normal, gamma, and chi-square distributions. The author goes on to examine the history of probability, the laws of large numbers, and the central limit theorem. The final chapter explores stochastic processes and applications, ideal for students in operations research and finance.

Kevin J. Hastings is a professor of mathematics at Knox College in Galesburg, Illinois.