Midlands State University Library
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Probability for engineering, mathematics, and science / created by Chris P. Tsokos.

By: Material type: TextTextPublisher: Brooks/Cole, Cengage Learning, 2012Copyright date: ©2012Edition: International editionDescription: xiv, 587 pages : illustrations ; 24 cmContent type:
  • text
Media type:
  • unmediated
Carrier type:
  • volume
ISBN:
  • 9781111580735
Subject(s): LOC classification:
  • TA340 TSO
Contents:
1. PROBABILITY.Definition of Probability. Axiomatic Definition of Probability. Conditional Probability. Marginal Probabilities. Bayes' Theorem. Independent Events. Combinatorial Probability.2. DISCRETE PROBABILITY DISTRIBUTIONS.Discrete Probability Density Function. Cumulative Distribution Function. The Point Binomial Distribution. The Binomial Probability Distribution. The Poisson Probability Distribution. The Hypergeometric Probability Distribution. The Geometric Probability Distribution. The Negative Binomial Probability Distribution.3. PROBABILITY DISTRIBUTIONS OF CONTINUOUS RANDOM VARIABLES.Continuous Random Variable and Probability Density Function. Cumulative Distribution Function of a Continuous Random Variable. The Continuous Probability Distributions.4. FUNCTIONS OF A RANDOM VARIABLE.Introduction. Distribution of a Continuous Function of a Discrete Random Variable. Distribution of a Continuous Function of a Continuous Random Variable. Other Types of Derived Distributions.5. EXPECTED VALUES, MOMENTS AND MOMENT GENERATING FUNCTIONS.Mathematical Expectation. Properties of Expectation. Moments. Moment Generating Function.6. TWO RANDOM VARIABLES.Joint Probability Density Function. Bivariate Cumulative Distribution Function. Marginal Probability Distributions. Conditional Probability Density and Cumulative Distribution Functions. Independent Random Variables. Function of Two Random Variables. Expected Value and Moments. Conditional Expectation. Bivariate Normal Distribution.7. SEQUENCE OF RANDOM VARIABLES.Multivariate Probability Density Functions. Multivariate Cumulative Distribution Functions. Marginal Probability Distributions. Conditional Probability Density and Cumulative Distribution Functions. Sequence of Independent Random Variables. Functions of Random Variables. Expected Value and Moments. Conditional Expectation.8. LIMIT THEOREMS.Chebyshev's Inequality. Bernoulli's Law of Large Numbers. Weak and Strong Laws of Large Numbers. The Central Limit Theorem. The DeMoivre-Laplace Theorem. Normal Approximation to the Poisson Distribution. Normal Approximation to the Gamma Distribution.9. FINITE MARKOV CHAINS.Basic Concepts. N-Step Transitions Problems. Evaluation of Pn. Classification of States.Appendix.Index.
Summary: Blends theory and applications, reinforcing concepts with practical real-world examples that illustrate the importance of probability to those who will use it in their subsequent courses and careers. This book emphasizes the study of probability distributions that characterize random variables.
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Holdings
Item type Current library Call number Copy number Status Date due Barcode
Book Book Main Library Open Shelf TA340 TSO (Browse shelf(Opens below)) 169762 Available BK148485
Book Book Zvishavane Mining Sciences Library Open Shelf TA340 TSO (Browse shelf(Opens below)) 160873 Available BK148487
Book Book Zvishavane Mining Sciences Library Open Shelf TA340 TSO (Browse shelf(Opens below)) 159530 Available BK147367
Book Book Zvishavane Mining Sciences Library Open Shelf TA340 TSO (Browse shelf(Opens below)) 159532 Available BK147337
Book Book Zvishavane Mining Sciences Library Open Shelf TA340 TSO (Browse shelf(Opens below)) 159531 Available BK147319
Book Book Zvishavane Mining Sciences Library Open Shelf TA340 TSO (Browse shelf(Opens below)) 154298 Available BK141348

Includes index.

1. PROBABILITY.Definition of Probability. Axiomatic Definition of Probability. Conditional Probability. Marginal Probabilities. Bayes' Theorem. Independent Events. Combinatorial Probability.2. DISCRETE PROBABILITY DISTRIBUTIONS.Discrete Probability Density Function. Cumulative Distribution Function. The Point Binomial Distribution. The Binomial Probability Distribution. The Poisson Probability Distribution. The Hypergeometric Probability Distribution. The Geometric Probability Distribution. The Negative Binomial Probability Distribution.3. PROBABILITY DISTRIBUTIONS OF CONTINUOUS RANDOM VARIABLES.Continuous Random Variable and Probability Density Function. Cumulative Distribution Function of a Continuous Random Variable. The Continuous Probability Distributions.4. FUNCTIONS OF A RANDOM VARIABLE.Introduction. Distribution of a Continuous Function of a Discrete Random Variable. Distribution of a Continuous Function of a Continuous Random Variable. Other Types of Derived Distributions.5. EXPECTED VALUES, MOMENTS AND MOMENT GENERATING FUNCTIONS.Mathematical Expectation. Properties of Expectation. Moments. Moment Generating Function.6. TWO RANDOM VARIABLES.Joint Probability Density Function. Bivariate Cumulative Distribution Function. Marginal Probability Distributions. Conditional Probability Density and Cumulative Distribution Functions. Independent Random Variables. Function of Two Random Variables. Expected Value and Moments. Conditional Expectation. Bivariate Normal Distribution.7. SEQUENCE OF RANDOM VARIABLES.Multivariate Probability Density Functions. Multivariate Cumulative Distribution Functions. Marginal Probability Distributions. Conditional Probability Density and Cumulative Distribution Functions. Sequence of Independent Random Variables. Functions of Random Variables. Expected Value and Moments. Conditional Expectation.8. LIMIT THEOREMS.Chebyshev's Inequality. Bernoulli's Law of Large Numbers. Weak and Strong Laws of Large Numbers. The Central Limit Theorem. The DeMoivre-Laplace Theorem. Normal Approximation to the Poisson Distribution. Normal Approximation to the Gamma Distribution.9. FINITE MARKOV CHAINS.Basic Concepts. N-Step Transitions Problems. Evaluation of Pn. Classification of States.Appendix.Index.

Blends theory and applications, reinforcing concepts with practical real-world examples that illustrate the importance of probability to those who will use it in their subsequent courses and careers. This book emphasizes the study of probability distributions that characterize random variables.

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