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Introduction to Probability Models – Sheldon M. Ross – 10th Edition

Descripción

Hay dos enfoques para el estudio de la teoría de la probabilidad. Uno es heurístico y no riguroso, e intenta desarrollar en los estudiantes una sensación intuitiva para el tema que le permita pensar probabilísticamente. El otro enfoque intenta un desarrollo riguroso de probabilidad utilizando las herramientas de la teoría de la medida. El primer enfoque se emplea en este texto.

El libro comienza con la introducción de conceptos básicos de la teoría de la probabilidad, como la variable aleatoria, la probabilidad condicional y la expectativa condicional. Esto es seguido por discusiones de procesos estocásticos, incluyendo cadenas de Markov y procesos de envenenamiento. Los capítulos restantes cubren colas, teoría de confiabilidad, movimiento browniano y simulación. Se elaboran muchos ejemplos a lo largo del texto, junto con ejercicios que los estudiantes deben resolver.

Este libro será particularmente útil para aquellos interesados ​​en aprender cómo se puede aplicar la teoría de la probabilidad al estudio de fenómenos en campos como la ingeniería, la informática, la ciencia de la gestión, las ciencias físicas y sociales y la investigación de operaciones. Idealmente, este texto se usaría en un curso de un año en modelos de probabilidad, o un curso de un semestre en teoría de probabilidad introductoria o un curso en procesos estocásticos elementales.

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  • Preface

    1 Introduction to Probability Theory
    1.1 Introduction
    1.2 Sample Space and Events
    1.3 Probabilities Defined on Events
    1.4 Conditional Probabilities
    1.5 Independent Events
    1.6 Bayes’ Formula
    Exercises
    References

    2 Random Variables
    2.1 Random Variables
    2.2 Discrete Random Variables
    2.2.1 The Bernoulli Random Variable
    2.2.2 The Binomial Random Variable
    2.2.3 The Geometric Random Variable
    2.2.4 The Poisson Random Variable
    2.3 Continuous Random Variables
    2.3.1 The Uniform Random Variable
    2.3.2 Exponential Random Variables
    2.3.3 Gamma Random Variables
    2.3.4 Normal Random Variables
    2.4 Expectation of a Random Variable
    2.4.1 The Discrete Case
    2.4.2 The Continuous Case
    2.4.3 Expectation of a Function of a Random Variable
    2.5 Jointly Distributed Random Variables
    2.5.1 Joint Distribution Functions
    2.5.2 Independent Random Variables
    2.5.3 Covariance and Variance of Sums of Random Variables
    2.5.4 Joint Probability Distribution of Functions of Random Variables
    2.6 Moment Generating Functions
    2.6.1 The Joint Distribution of the Sample Mean and Sample Variance from a Normal Population
    2.7 The Distribution of the Number of Events that Occur
    2.8 Limit Theorems
    2.9 Stochastic Processes
    Exercises
    References

    3 Conditional Probability and Conditional Expectation
    3.1 Introduction
    3.2 The Discrete Case
    3.3 The Continuous Case
    3.4 Computing Expectations by Conditioning
    3.4.1 Computing Variances by Conditioning
    3.5 Computing Probabilities by Conditioning
    3.6 Some Applications
    3.6.1 A List Model
    3.6.2 A Random Graph
    3.6.3 Uniform Priors, Polyas Urn Model, and Bose–Einstein Statistics
    3.6.4 Mean Time for Patterns
    3.6.5 The k-Record Values of Discrete Random Variables
    3.6.6 Left Skip Free Random Walks
    3.7 An Identity for Compound Random Variables
    3.7.1 Poisson Compounding Distribution
    3.7.2 Binomial Compounding Distribution
    3.7.3 A Compounding Distribution Related to the Negative Binomial
    Exercises

    4 Markov Chains
    4.1 Introduction
    4.2 Chapman–Kolmogorov Equations
    4.3 Classification of States
    4.4 Limiting Probabilities
    4.5 Some Applications
    4.5.1 The Gamblers Ruin Problem
    4.5.2 A Model for Algorithmic Efficiency
    4.5.3 Using a Random Walk to Analyze a Probabilistic Algorithm for the Satisfiability Problem
    4.6 Mean Time Spent in Transient States
    4.7 Branching Processes
    4.8 Time Reversible Markov Chains
    4.9 Markov Chain Monte Carlo Methods
    4.10 Markov Decision Processes
    4.11 Hidden Markov Chains
    4.11.1 Predicting the States
    Exercises
    References

    5 The Exponential Distribution and the Poisson Process
    5.1 Introduction
    5.2 The Exponential Distribution
    5.2.1 Definition
    5.2.2 Properties of the Exponential Distribution
    5.2.3 Further Properties of the Exponential Distribution
    5.2.4 Convolutions of Exponential Random Variables
    5.3 The Poisson Process
    5.3.1 Counting Processes
    5.3.2 Definition of the Poisson Process
    5.3.3 Interarrival and Waiting Time Distributions
    5.3.4 Further Properties of Poisson Processes
    5.3.5 Conditional Distribution of the Arrival Times
    5.3.6 Estimating Software Reliability
    5.4 Generalizations of the Poisson Process
    5.4.1 Nonhomogeneous Poisson Process
    5.4.2 Compound Poisson Process
    5.4.3 Conditional or Mixed Poisson Processes
    Exercises
    References

    6 Continuous-Time Markov Chains
    6.1 Introduction
    6.2 Continuous-Time Markov Chains
    6.3 Birth and Death Processes
    6.4 The Transition Probability Function Pij(t)
    6.5 Limiting Probabilities
    6.6 Time Reversibility
    6.7 Uniformization
    6.8 Computing the Transition Probabilities
    Exercises
    References

    7 Renewal Theory and Its Applications
    7.1 Introduction
    7.2 Distribution of N(t)
    7.3 Limit Theorems and Their Applications
    7.4 Renewal Reward Processes
    7.5 Regenerative Processes
    7.5.1 Alternating Renewal Processes
    7.6 Semi-Markov Processes
    7.7 The Inspection Paradox
    7.8 Computing the Renewal Function
    7.9 Applications to Patterns
    7.9.1 Patterns of Discrete Random Variables
    7.9.2 The Expected Time to a Maximal Run of Distinct Values
    7.9.3 Increasing Runs of Continuous Random Variables
    7.10 The Insurance Ruin Problem
    Exercises
    References

    8 Queueing Theory
    8.1 Introduction
    8.2 Preliminaries
    8.2.1 Cost Equations
    8.2.2 Steady-State Probabilities
    8.3 Exponential Models
    8.3.1 A Single-Server Exponential Queueing System
    8.3.2 A Single-Server Exponential Queueing System Having Finite Capacity
    8.3.3 Birth and Death Queueing Models
    8.3.4 A Shoe Shine Shop
    8.3.5 A Queueing System with Bulk Service
    8.4 Network of Queues
    8.4.1 Open Systems
    8.4.2 Closed Systems
    8.5 The System M/G/1
    8.5.1 Preliminaries: Work and Another Cost Identity
    8.5.2 Application of Work to M/G/1
    8.5.3 Busy Periods
    8.6 Variations on the M/G/1
    8.6.1 The M/G/1 with Random-Sized Batch Arrivals
    8.6.2 Priority Queues
    8.6.3 An M/G/1 Optimization Example
    8.6.4 The M/G/1 Queue with Server Breakdown
    8.7 The Model G/M/1
    8.7.1 The G/M/1 Busy and Idle Periods
    8.8 A Finite Source Model
    8.9 Multiserver Queues
    8.9.1 Erlangs Loss System
    8.9.2 The M/M/k Queue
    8.9.3 The G/M/k Queue
    8.9.4 The M/G/k Queue
    Exercises
    References

    9 Reliability Theory
    9.1 Introduction
    9.2 Structure Functions
    9.2.1 Minimal Path and Minimal Cut Sets
    9.3 Reliability of Systems of Independent Components
    9.4 Bounds on the Reliability Function
    9.4.1 Method of Inclusion and Exclusion
    9.4.2 Second Method for Obtaining Bounds on r(p)
    9.5 System Life as a Function of Component Lives
    9.6 Expected System Lifetime
    9.6.1 An Upper Bound on the Expected Life of a Parallel System
    9.7 Systems with Repair
    9.7.1 A Series Model with Suspended Animation
    Exercises
    References

    10 Brownian Motion and Stationary Processes
    10.1 Brownian Motion
    10.2 Hitting Times, Maximum Variable, and the Gambler's Ruin Problem
    10.3 Variations on Brownian Motion
    10.3.1 Brownian Motion with Drift
    10.3.2 Geometric Brownian Motion
    10.4 Pricing Stock Options
    10.4.1 An Example in Options Pricing
    10.4.2 The Arbitrage Theorem
    10.4.3 The Black-Scholes Option Pricing Formula
    10.5 White Noise
    10.6 Gaussian Processes
    10.7 Stationary and Weakly Stationary Processes
    10.8 Harmonic Analysis of Weakly Stationary Processes
    Exercises
    References

    11 Simulation
    11.1 Introduction
    11.2 General Techniques for Simulating Continuous Random Variables
    11.2.1 The Inverse Transformation Method
    11.2.2 The Rejection Method
    11.2.3 The Hazard Rate Method
    11.3 Special Techniques for Simulating Continuous Random Variables
    11.3.1 The Normal Distribution
    11.3.2 The Gamma Distribution
    11.3.3 The Chi-Squared Distribution
    11.3.4 The Beta (n,m) Distribution
    11.3.5 The Exponential Distribution—The Von Neumann Algorithm
    11.4 Simulating from Discrete Distributions
    11.4.1 The Alias Method
    11.5 Stochastic Processes
    11.5.1 Simulating a Nonhomogeneous Poisson Process
    11.5.2 Simulating a Two-Dimensional Poisson Process
    11.6 Variance Reduction Techniques
    11.6.1 Use of Antithetic Variables
    11.6.2 Variance Reduction by Conditioning
    11.6.3 Control Variates
    11.6.4 Importance Sampling
    11.7 Determining the Number of Runs
    11.8 Generating from the Stationary Distribution of a Markov Chain
    11.8.1 Coupling from the Past
    11.8.2 Another Approach
    Exercises
    References

    Appendix: Solutions to Starred Exercises
    Index
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