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1. A first course in stochastic processes [1975]
- Karlin, Samuel, 1923-2007, author.
- Second edition. - New York : Academic Press, [1975]
- Description
- Book — 1 online resource (xvi, 557 pages) : illustrations
- Summary
-
- Preface. Elements of Stochastic Processes. Markov Chains. The Basic Limit Theorem of Markov Chains and Applications. Classical Examples of Continuous Time Markov Chains. Renewal Processes. Martingales. Brownian Motion. Branching Processes. Stationary Processes. Review of Matrix Analysis. Index.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
MATH-136-01
- Course
- MATH-136-01 -- Stochastic Processes
- Instructor(s)
- Dembo, Amir
- Rosenthal, Jeffrey S. (Jeffrey Seth)
- 2nd ed - Singapore ; Hackensack, N.J. : World Scientific, ©2006
- Description
- Book — 1 online resource (xvi, 219 pages) : illustrations
- Summary
-
- The need for measure theory
- Probability triples
- Further probabilistic foundations
- Expected values
- Inequalities and convergence
- Distributions of random variables
- Stochastic processes and gambling games
- Discrete Markov chains
- More probability theorems
- Weak convergence
- Characteristic functions
- Decomposition of probability laws
- Conditional probability and expectation
- Martingales
- General stochastic processes
- Mathematical background
- Online
-
- ProQuest Ebook Central Access limited to 3 simultaneous users
- Google Books (Full view)
MATH-136-01
- Course
- MATH-136-01 -- Stochastic Processes
- Instructor(s)
- Dembo, Amir
3. Introduction to stochastic processes [2006]
- Lawler, Gregory F., 1955-
- 2nd ed - Boca Raton : Chapman & Hall/CRC, 2006
- Description
- Book — 1 online resource (xiii, 234 pages)
- Summary
-
- Preface to Second Edition Preface to First Edition PRELIMINARIES Introduction Linear Differential Equations Linear Difference Equations Exercises FINITE MARKOV CHAINS Definitions and Examples Large-Time Behavior and Invariant Probability Classification of States Return Times Transient States Examples Exercises COUNTABLE MARKOV CHAINS Introduction Recurrence and Transience Positive Recurrence and Null Recurrence Branching Process Exercises CONTINUOUS-TIME MARKOV CHAINS Poisson Process Finite State Space Birth-and-Death Processes General Case Exercises OPTIMAL STOPPING Optimal Stopping of Markov Chains Optimal Stopping with Cost Optimal Stopping with Discounting Exercises MARTINGALES Conditional Expectation Definition and Examples Optional Sampling Theorem Uniform Integrability Martingale Convergence Theorem Maximal Inequalities Exercises RENEWAL PROCESSES Introduction Renewal Equation Discrete Renewal Processes M/G/1 and G/M/1 Queues Exercises REVERSIBLE MARKOV CHAINS Reversible Processes Convergence to Equilibrium Markov Chain Algorithms A Criterion for Recurrence Exercises BROWNIAN MOTION Introduction Markov Property Zero Set of Brownian Motion Brownian Motion in Several Dimensions Recurrence and Transience Fractal Nature of Brownian Motion Scaling Rules Brownian Motion with Drift Exercises STOCHASTIC INTEGRATION Integration with Respect to Random Walk Integration with Respect to Brownian Motion Ito's Formula Extensions if Ito's Formula Continuous Martingales Girsanov Transformation Feynman-Kac Formula Black-Scholes Formula Simulation Exercises Suggestions for Further Reading Index.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Online
-
- ProQuest Ebook Central Access limited to 3 simultaneous users
- Google Books (Full view)
MATH-136-01
- Course
- MATH-136-01 -- Stochastic Processes
- Instructor(s)
- Dembo, Amir
4. Stochastic calculus for finance [2004 - ]
- Shreve, Steven E.
- New York : Springer, c2004-
- Description
- Book — v. : ill. ; 25 cm.
- Summary
-
- v. 1. The binomial asset pricing model
- v. 2. Continuous-time models.
(source: Nielsen Book Data)
This book evolved from the first ten years of the Carnegie Mellon professional Master's program in Computational Finance. The contents of the book have been used successfully with students whose mathematics background consists of calculus and calculus-based probability. The text gives both precise statements of results, plausibility arguments, and even some proofs. But more importantly, intuitive explanations, developed and refined through classroom experience with this material, are provided throughout the book. Volume I introduces the fundamental concepts in a discrete-time setting and Volume II builds on this foundation to develop stochastic calculus, martingales, risk-neutral pricing, exotic options, and term structure models, all in continuous time. The book includes a self-contained treatment of the probability theory needed for stochastic calculus, including Brownian motion and its properties. Advanced topics include foreign exchange models, forward measures, and jump-diffusion processes. Classroom-tested exercises conclude every chapter; some of these extend the theory while others are drawn from practical problems in quantitative finance. Instructor's manual available.
(source: Nielsen Book Data)
Science Library (Li and Ma)
Science Library (Li and Ma) | Status |
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Stacks
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HG106 .S57 2004 V.1 | Unknown |
HG106 .S57 2004 V.2 | Unknown |
MATH-136-01
- Course
- MATH-136-01 -- Stochastic Processes
- Instructor(s)
- Dembo, Amir