Syllabus for |
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TMS165 - Stochastic calculus
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Stokastisk analys |
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Syllabus adopted 2017-02-07 by Head of Programme (or corresponding) |
Owner: MPENM |
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7,5 Credits
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Grading: TH - Five, Four, Three, Fail |
Education cycle: Second-cycle |
Major subject: Mathematics
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Department: 11 - MATHEMATICAL SCIENCES
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Teaching language: English
Open for exchange students: Yes
Course module |
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Credit distribution |
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Examination dates |
Sp1 |
Sp2 |
Sp3 |
Sp4 |
Summer course |
No Sp |
0104 |
Examination |
7,5 c |
Grading: TH |
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7,5 c
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30 Oct 2018 am SB_MU
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04 Jan 2019 pm SB
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23 Aug 2019 am M
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In programs
MPENM ENGINEERING MATHEMATICS AND COMPUTATIONAL SCIENCE, MSC PROGR, Year 2 (elective)
MPENM ENGINEERING MATHEMATICS AND COMPUTATIONAL SCIENCE, MSC PROGR, Year 1 (compulsory elective)
MPCAS COMPLEX ADAPTIVE SYSTEMS, MSC PROGR, Year 2 (elective)
MPCAS COMPLEX ADAPTIVE SYSTEMS, MSC PROGR, Year 1 (compulsory elective)
Examiner:
Patrik Albin
Go to Course Homepage
Eligibility:
In order to be eligible for a second cycle course the applicant needs to fulfil the general and specific entry requirements of the programme that owns the course. (If the second cycle course is owned by a first cycle programme, second cycle entry requirements apply.)
Exemption from the eligibility requirement:
Applicants enrolled in a programme at Chalmers where the course is included in the study programme are exempted from fulfilling these requirements.
Course specific prerequisites
Probability theory from a first course in mathematical statistics.
Some experience of computer programming such as, for example, basic knowledge of Matlab programming.
Mathematics corresponding to what students from quite math oriented educations such as TM (Technical Mathematics) or F (Engineering Physics) learn on basic level.
Aim
Give good understanding of and ability to use those aspects of stochastic calculus and stochastic differential equations that are of the greatest importance in both applications in technical sciences and natural sciences as well as in further mathematical and mathematical statistical theory development.
Learning outcomes (after completion of the course the student should be able to)
Describe defining properties for stochastic differential equations and their solutions together with ability to use basic methods solution methods thereof including quadratic variation, martingale techniques and Ito¿s formula.
Describe the relation between solutions to stochastic differential equations and solutions to certain (deterministic) partial differential equations from a principal theoretical point of view as well as performing corresponding computational examples.
Describe change of measure and change of drift coefficient for solutions to stochastic differential equations from a principal theoretical point of view as well as by application to statistical inference.
Describe basic principles for numerical solution of stochastic differential equations according to the course literature from a principal theoretical point of view as well as performing corresponding computational examples.
Content
Variation and quadratic variation of functions. Review of Riemann integral, Riemann-Stieltjes integral and Lebesgue integral. Introduction to axiomatic probability theory and to abstract conditional expectation with respect to sigma fields. Brownian motion (Wiener process) together with its most important properties. Defining properties of martingales and Markov processes with continuous time and continuous values. Ito integrals, Ito integral processes and Ito¿s formula. Stochastic differential equations together with existence, uniqueness and Markov property of weak solutions and strong solutions thereof. Stochastic exponential, stochastic logarithm and linear stochastic differential equations. Stratonovich stochastic calculus. Kolmogorov¿s equations together with Dynkin¿s formula and the Feynman-Kac formula. Time homogeneous diffusion processes together with explosion, recurrence, transience and stationary distributions thereof. Change of probability measure for stochastic variables. Change of probability measure and drift coefficient for solutions of stochastic differential equations with applications to likelihood principles and statistical inference.
Organisation
Lectures and tutorials.
Literature
Chapters 1-6 and 10 in "Fima C. Klebaner (2012). Introduction to Stochastic Calculus with Applications, Third Edition, Imperial College Press, London". Additional lecture notes on applications and numerical methods.
Examination including compulsory elements
Written exam.