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9780470889749

Probability, Statistics, and Stochastic Processes

by ;
  • ISBN13:

    9780470889749

  • ISBN10:

    0470889748

  • Edition: 2nd
  • Format: Hardcover
  • Copyright: 2012-05-22
  • Publisher: Wiley
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Summary

This book provides a unique and balanced approach to probability, statistics, and stochastic processes. Readers gain a solid foundation in all three fields that serves as a stepping stone to more advanced investigations into each area. The Second Edition features new coverage of analysis of variance (ANOVA), consistency and efficiency of estimators, asymptotic theory for maximum likelihood estimators, empirical distribution function and the Kolmogorov-Smirnov test, general linear models, multiple comparisons, Markov chain Monte Carlo (MCMC), Brownian motion, martingales, and renewal theory. Many new introductory problems and exercises have also been added. This book combines a rigorous, calculus-based development of theory with a more intuitive approach that appeals to readers sense of reason and logic, an approach developed through the authors many years of classroom experience. The book begins with three chapters that develop probability theory and introduce the axioms of probability, random variables, and joint distributions. The next two chapters introduce limit theorems and simulation. Also included is a chapter on statistical inference with a focus on Bayesian statistics, which is an important, though often neglected, topic for undergraduate-level texts. Markov chains in discrete and continuous time are also discussed within the book. More than 400 examples are interspersed throughout to help illustrate concepts and theory and to assist readers in developing an intuitive sense of the subject. Readers will find many of the examples to be both entertaining and thought provoking. This is also true for the carefully selected problems that appear at the end of each chapter.

Author Biography

Peter Olofsson, PhD, is Professor in the Mathematics Department at Trinity University. Dr. Olofsson's research interests include stochastic processes, branching processes, mathematical biology, and Poisson approximation. He is the author of Probabilities: The Little Numbers That Rule Our Lives, also published by Wiley. Mikael Andersson, PhD, is Associate Professor in the Department of Applied Statistics at the Swedish University of Agricultural Sciences. Dr. Andersson's research interests include stochastic modeling of infectious diseases, epidemiology, and biological applications.

Table of Contents

Prefacep. xi
Preface to the First Editionp. xiii
Basic Probability Theoryp. 1
Introductionp. 1
Sample Spaces and Eventsp. 3
The Axioms of Probabilityp. 7
Finite Sample Spaces and Combinatoricsp. 15
Combinatoricsp. 17
Conditional Probability and Independencep. 27
Independent Eventsp. 33
The Law of Total Probability and Bayes' Formulap. 41
Bayes' Formulap. 47
Genetics and Probabilityp. 54
Recursive Methodsp. 55
Problemsp. 63
Random Variablesp. 76
Introductionp. 76
Discrete Random Variablesp. 77
Continuous Random Variablesp. 82
The Uniform Distributionp. 90
Functions of Random Variablesp. 92
Expected Value and Variancep. 95
The Expected Value of a Function of a Random Variablep. 100
Variance of a Random Variablep. 104
Special Discrete Distributionsp. 111
Indicatorsp. 111
The Binomial Distributionp. 112
The Geometric Distributionp. 116
The Poisson Distributionp. 117
The Hypergeometric Distributionp. 121
Describing Data Setsp. 121
The Exponential Distributionp. 123
The Normal Distributionp. 127
Other Distributionsp. 131
The Lognormal Distributionp. 131
The Gamma Distributionp. 133
The Cauchy Distributionp. 134
Mixed Distributionsp. 135
Location Parametersp. 137
The Failure Rate Functionp. 139
Uniqueness of the Failure Rate Functionp. 141
Problemsp. 144
Joint Distributionsp. 156
Introductionp. 156
The Joint Distribution Functionp. 156
Discrete Random Vectorsp. 158
Jointly Continuous Random Vectorsp. 160
Conditional Distributions and Independencep. 164
Independent Random Variablesp. 168
Functions of Random Vectorsp. 172
Real-Valued Functions of Random Vectorsp. 172
The Expected Value and Variance of a Sump. 176
Vector-Valued Functions of Random Vectorsp. 182
Conditional Expectationp. 185
Conditional Expectation as a Random Variablep. 189
Conditional Expectation and Predictionp. 191
Conditional Variancep. 192
Recursive Methodsp. 193
Covariance and Correlationp. 196
The Correlation Coefficientp. 201
The Bivariate Normal Distributionp. 209
Multidimensional Random Vectorsp. 216
Order Statisticsp. 218
Reliability Theoryp. 223
The Multinomial Distributionp. 225
The Multivariate Normal Distributionp. 226
Convolutionp. 227
Generating Functionsp. 231
The Probability Generating Functionp. 231
The Moment Generating Functionp. 237
The Poisson Processp. 240
Thinning and Superpositionp. 244
Problemsp. 247
Limit Theoremsp. 263
Introductionp. 263
The Law of Large Numbersp. 264
The Central Limit Theoremp. 268
The Delta Methodp. 273
Convergence in Distributionp. 275
Discrete Limitsp. 275
Continuous Limitsp. 277
Problemsp. 278
Simulationp. 281
Introductionp. 281
Random Number Generationp. 282
Simulation of Discrete Distributionsp. 283
Simulation of Continuous Distributionsp. 285
Miscellaneousp. 290
Problemsp. 292
Statistical Inferencep. 294
Introductionp. 294
Point Estimatorsp. 294
Estimating the Variancep. 302
Confidence Intervalsp. 304
Confidence Interval for the Mean in the Normal Distribution with Known Variancep. 307
Confidence Interval for an Unknown Probabilityp. 308
One-Sided Confidence Intervalsp. 312
Estimation Methodsp. 312
The Method of Momentsp. 312
Maximum Likelihoodp. 315
Evaluation of Estimators with Simulationp. 322
Bootstrap Simulationp. 324
Hypothesis Testingp. 327
Large Sample Testsp. 332
Test for an Unknown Probabilityp. 333
Further Topics in Hypothesis Testingp. 334
P-Valuesp. 334
Data Snoopingp. 335
The Power of a Testp. 336
Multiple Hypothesis Testingp. 338
Goodness of Fitp. 339
Goodness-of-Fit Test for Independencep. 346
Fisher's Exact Testp. 349
Bayesian Statisticsp. 351
Noninformative priorsp. 359
Credibility Intervalsp. 362
Nonparametric Methodsp. 363
Nonparametric Hypothesis Testingp. 363
Comparing Two Samplesp. 370
Nonparametric Confidence Intervalsp. 375
Problemsp. 378
Linear Modelsp. 391
Introductionp. 391
Sampling Distributionsp. 392
Single Sample Inferencep. 395
Inference for the Variancep. 396
Inference for the Meanp. 399
Comparing Two Samplesp. 402
Inference about Meansp. 402
Inference about Variancesp. 407
Analysis of Variancep. 409
One-Way Analysis of Variancep. 409
Multiple Comparisons: Tukey's Methodp. 412
Kruskal-Wallis Testp. 413
Linear Regressionp. 415
Predictionp. 422
Goodness of Fitp. 424
The Sample Correlation Coefficientp. 425
Spearman's Correlation Coefficientp. 429
The General Linear Modelp. 431
Problemsp. 436
Stochastic Processesp. 444
Introductionp. 444
Discrete-Time Markov Chainsp. 445
Time Dynamics of a Markov Chainp. 447
Classification of Statesp. 450
Stationary Distributionsp. 454
Convergence to the Stationary Distributionp. 460
Random Walks and Branching Processesp. 464
The Simple Random Walkp. 464
Multidimensional Random Walksp. 468
Branching Processesp. 469
Continuous-Time Markov Chainsp. 475
Stationary Distributions and Limit Distributionsp. 480
Birth-Death Processesp. 484
Queueing Theoryp. 488
Further Properties of Queueing Systemsp. 491
Martingalesp. 494
Martingale Convergencep. 495
Stopping Timesp. 497
Renewal Processesp. 502
Asymptotic Propertiesp. 504
Brownian Motionp. 509
Hitting Timesp. 512
Variations of the Brownian Motionp. 515
Problemsp. 517
Tablesp. 527
Answers to Selected Problemsp. 535
Further Readingp. 551
Indexp. 553
Table of Contents provided by Ingram. All Rights Reserved.

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