Theory of Probability and Random Processes [electronic resource] / by Leonid Koralov, Yakov G. Sinai.

By: Koralov, Leonid [author.]Contributor(s): Sinai, Yakov G [author.] | SpringerLink (Online service)Material type: TextTextSeries: UniversitextPublisher: Berlin, Heidelberg : Springer Berlin Heidelberg : Imprint: Springer, 2007Edition: SecondDescription: XI, 358 p. online resourceContent type: text Media type: computer Carrier type: online resourceISBN: 9783540688297Subject(s): Mathematics | Probabilities | Mathematics | Probability Theory and Stochastic ProcessesAdditional physical formats: Printed edition:: No titleDDC classification: 519.2 LOC classification: QA273.A1-274.9QA274-274.9Online resources: Click here to access online
Contents:
Probability Theory -- Random Variables and Their Distributions -- Sequences of Independent Trials -- Lebesgue Integral and Mathematical Expectation -- Conditional Probabilities and Independence -- Markov Chains with a Finite Number of States -- Random Walks on the Lattice ?d -- Laws of Large Numbers -- Weak Convergence of Measures -- Characteristic Functions -- Limit Theorems -- Several Interesting Problems -- Random Processes -- Basic Concepts -- Conditional Expectations and Martingales -- Markov Processes with a Finite State Space -- Wide-Sense Stationary Random Processes -- Strictly Stationary Random Processes -- Generalized Random Processes -- Brownian Motion -- Markov Processes and Markov Families -- Stochastic Integral and the Ito Formula -- Stochastic Differential Equations -- Gibbs Random Fields.
In: Springer eBooksSummary: A one-year course in probability theory and the theory of random processes, taught at Princeton University to undergraduate and graduate students, forms the core of the content of this book It is structured in two parts: the first part providing a detailed discussion of Lebesgue integration, Markov chains, random walks, laws of large numbers, limit theorems, and their relation to Renormalization Group theory. The second part includes the theory of stationary random processes, martingales, generalized random processes, Brownian motion, stochastic integrals, and stochastic differential equations. One section is devoted to the theory of Gibbs random fields. This material is essential to many undergraduate and graduate courses. The book can also serve as a reference for scientists using modern probability theory in their research.
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Probability Theory -- Random Variables and Their Distributions -- Sequences of Independent Trials -- Lebesgue Integral and Mathematical Expectation -- Conditional Probabilities and Independence -- Markov Chains with a Finite Number of States -- Random Walks on the Lattice ?d -- Laws of Large Numbers -- Weak Convergence of Measures -- Characteristic Functions -- Limit Theorems -- Several Interesting Problems -- Random Processes -- Basic Concepts -- Conditional Expectations and Martingales -- Markov Processes with a Finite State Space -- Wide-Sense Stationary Random Processes -- Strictly Stationary Random Processes -- Generalized Random Processes -- Brownian Motion -- Markov Processes and Markov Families -- Stochastic Integral and the Ito Formula -- Stochastic Differential Equations -- Gibbs Random Fields.

A one-year course in probability theory and the theory of random processes, taught at Princeton University to undergraduate and graduate students, forms the core of the content of this book It is structured in two parts: the first part providing a detailed discussion of Lebesgue integration, Markov chains, random walks, laws of large numbers, limit theorems, and their relation to Renormalization Group theory. The second part includes the theory of stationary random processes, martingales, generalized random processes, Brownian motion, stochastic integrals, and stochastic differential equations. One section is devoted to the theory of Gibbs random fields. This material is essential to many undergraduate and graduate courses. The book can also serve as a reference for scientists using modern probability theory in their research.

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