CGiuliano
Lowly Undergrad
- Joined
- 4/19/09
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Ok, so next semester I'm going to be taking stochastic process, and my school offers a few different options. Please advise me on which to take, or what the major difference might be.
Thanks.
One Semester -- Math Department -- Stochastic Process
MATH 4740 Stochastic Processes (MQR)
Spring. 4 credits. Prerequisites: MATH 4710, BTRY 4080, ORIE 3600, or ECON 3190 and some knowledge of matrices (multiplication and inverses).
A one-semester introduction to stochastic processes which develops the theory together with applications. Markov chains in discrete and continuous time, Poisson processes, queuing theory, martingales, Brownian motion, and option pricing.
Engineering Stochastic Process Sequence
ORIE 3510 Introductory Engineering Stochastic Processes I
Spring and summer. 4 credits. Prerequisite: grade of C– or better in ORIE 3500 or equivalent.
Uses basic concepts and techniques of random processes to construct models for a variety of problems of practical interest. Topics include the Poisson process, Markov chains, renewal theory, models for queuing, and reliability.
ORIE 4520 Introductory Engineering Stochastic Processes II
Spring. 4 credits. Prerequisite: ORIE 3510 or equivalent.
Topics include stationary processes, martingales, random walks, and gambler’s ruin problems, processes with stationary independent increments, Brownian motion and other cases, branching processes, renewal and Markov-renewal processes, reliability theory, Markov decision processes, optimal stopping, statistical inference from stochastic models, and stochastic comparison methods for probability models. Applications to population growth, spread of epidemics, and other models.
Graduate Stochastic Calculus Sequence -- In M.eng curriculum
ORIE 5600 Financial Engineering with Stochastic Calculus I
Fall. 4 credits. Prerequisite: knowledge of probability at level of ORIE 3500.
Introduction to continuous-time models of financial engineering and the mathematical tools required to use them, starting with the Black-Scholes model. Driven by the problem of derivative security pricing and hedging in this model, the course develops a practical knowledge of stochastic calculus from an elementary standpoint, covering topics including Brownian motion, martingales, the Ito formula, the Feynman-Kac formula, and Girsanov transformations.
ORIE 5610 Financial Engineering with Stochastic Calculus II
Spring. 4 credits. Prerequisite: ORIE 5600.
Building on the foundation established in ORIE 5600, this course presents no-arbitrage theories of complete markets, including models for equities, foreign exchange, and fixed-income securities, in relation to the main problems of financial engineering: pricing and hedging of derivative securities, portfolio optimization, and risk management. Other topics include model calibration and incomplete markets.
Thanks.
One Semester -- Math Department -- Stochastic Process
MATH 4740 Stochastic Processes (MQR)
Spring. 4 credits. Prerequisites: MATH 4710, BTRY 4080, ORIE 3600, or ECON 3190 and some knowledge of matrices (multiplication and inverses).
A one-semester introduction to stochastic processes which develops the theory together with applications. Markov chains in discrete and continuous time, Poisson processes, queuing theory, martingales, Brownian motion, and option pricing.
Engineering Stochastic Process Sequence
ORIE 3510 Introductory Engineering Stochastic Processes I
Spring and summer. 4 credits. Prerequisite: grade of C– or better in ORIE 3500 or equivalent.
Uses basic concepts and techniques of random processes to construct models for a variety of problems of practical interest. Topics include the Poisson process, Markov chains, renewal theory, models for queuing, and reliability.
ORIE 4520 Introductory Engineering Stochastic Processes II
Spring. 4 credits. Prerequisite: ORIE 3510 or equivalent.
Topics include stationary processes, martingales, random walks, and gambler’s ruin problems, processes with stationary independent increments, Brownian motion and other cases, branching processes, renewal and Markov-renewal processes, reliability theory, Markov decision processes, optimal stopping, statistical inference from stochastic models, and stochastic comparison methods for probability models. Applications to population growth, spread of epidemics, and other models.
Graduate Stochastic Calculus Sequence -- In M.eng curriculum
ORIE 5600 Financial Engineering with Stochastic Calculus I
Fall. 4 credits. Prerequisite: knowledge of probability at level of ORIE 3500.
Introduction to continuous-time models of financial engineering and the mathematical tools required to use them, starting with the Black-Scholes model. Driven by the problem of derivative security pricing and hedging in this model, the course develops a practical knowledge of stochastic calculus from an elementary standpoint, covering topics including Brownian motion, martingales, the Ito formula, the Feynman-Kac formula, and Girsanov transformations.
ORIE 5610 Financial Engineering with Stochastic Calculus II
Spring. 4 credits. Prerequisite: ORIE 5600.
Building on the foundation established in ORIE 5600, this course presents no-arbitrage theories of complete markets, including models for equities, foreign exchange, and fixed-income securities, in relation to the main problems of financial engineering: pricing and hedging of derivative securities, portfolio optimization, and risk management. Other topics include model calibration and incomplete markets.