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Course detail
FEKT-MPC-PSOAcad. year: 2026/2027
The course focuses on consolidating and expanding students' knowledge of probability theory, mathematical statistics and theory of selected methods of operations research. Thus it begins with a thorough and correct introduction of probability and its basic properties. Then we define a random variable, its numerical characteristics and distribution. On this basis we then build descriptive statistics and statistical hypothesis testing problem, the choice of the appropriate test and explanation of conclusions and findings of tests. In operational research we discuss linear programming and its geometric and algebraic solutions, transportation and assignment problem, and an overview of the dynamic and probabilistic programming methods and inventories. In this section the illustrative examples are taken primarily from economics.
Language of instruction
Number of ECTS credits
Mode of study
Guarantor
Department
Entry knowledge
Rules for evaluation and completion of the course
Aims
Study aids
Prerequisites and corequisites
Basic literature
Recommended reading
Classification of course in study plans
specialization AUDM-TECH , 1 year of study, winter semester, compulsory-optionalspecialization AUDM-ZVUK , 1 year of study, winter semester, compulsory-optional
specialization MPC-BIO_TECH , 2 year of study, winter semester, compulsory
Lecture
Teacher / Lecturer
Syllabus
2. Statistics, parameter estimates, t-test.
3. Analysis of diffusion, one-and two-factor.
4. Correlation approach, regression line.
5. After the spread of dispersion and/or the place of it.
6. Splitting " chi-square " and its application.
7. Non-parametric tests.
8. Linear programming, simplex method.
9. Duality in linearing programming.
10. Traffic and assignment task.
11. Dynamic programming.
12. Stock models.
13. Probability dynamic programming.
Computer-assisted exercise
1. Probability, random variable, characteristics, limit theorems2. Statistics, parameter estimates, t-test3. Analysis of diffusion, one-and two-factor4. Correlation approach, regression line5. After the spread of dispersion and/or the place of it6. Splitting " chi-square " and its application7. Non-parametric tests8. Linear programming, simplex method9. Duality in linearing programming10. Traffic and assignment task11. Dynamic programming12. Stock models13. Probability dynamic programming
Regular individual preparation for activities in the semester
Studenti a studentky se pravidelně připravují na cvičení, aby průběžně zvládli probíranou látku, studují výukové podklady z přednášek a ze cvičení.
Individual preparation for a final exam
Samostudium výukových podkladů z přednášek a ze cvičení popř. jiných relevantních zdrojů.