CTU FEE Moodle
Probability and Statistics
B232 - Summer 23/24
This is a grouped Moodle course. It consists of several separate courses that share learning materials, assignments, tests etc. Below you can see information about the individual courses that make up this Moodle course.
Probability and Statistics - B0B01PST
Main course
Credits | 7 |
Semesters | Winter |
Completion | Assessment + Examination |
Language of teaching | undefined |
Extent of teaching | 4P+2S |
Annotation
No data.
Study targets
No data.
Course outlines
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Exercises outlines
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Literature
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Requirements
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Probability and Statistics - B0B01PST1
Credits | 6 |
Semesters | Winter |
Completion | Assessment + Examination |
Language of teaching | undefined |
Extent of teaching | 4P+2S |
Annotation
Basics of probability theory and mathematical statistics. Includes descriptions of probability, random variables and their distributions, characteristics and operations with random variables. Basics of mathematical statistics: Point and interval estimates, methods of parameters estimation and hypotheses testing, least squares method. Basic notions and results of the theory of Markov chains.
Study targets
Basics of probability theory and their application in statistical estimates and tests.
The use of Markov chains in modeling.
The use of Markov chains in modeling.
Course outlines
1. Basic notions of probability theory. Kolmogorov model of probability. Independence, conditional probability, Bayes formula.
2. Random variables and their description. Random vector. Probability distribution function.
3. Quantile function. Mixture of random variables.
4. Characteristics of random variables and their properties. Operations with random variables. Basic types of distributions.
5. Characteristics of random vectors. Covariance, correlation. Chebyshev inequality. Law of large numbers. Central limit theorem.
6. Basic notions of statistics. Sample mean, sample variance. Interval estimates of mean and variance.
7. Method of moments, method of maximum likelihood. EM algorithm.
8. Hypotheses testing. Tests of mean and variance.
9. Goodness-of-fit tests.
10. Tests of correlation, non-parametic tests.
11. Discrete random processes. Stationary processes. Markov chains.
12. Classification of states of Markov chains.
13. Asymptotic properties of Markov chains. Overview of applications.
2. Random variables and their description. Random vector. Probability distribution function.
3. Quantile function. Mixture of random variables.
4. Characteristics of random variables and their properties. Operations with random variables. Basic types of distributions.
5. Characteristics of random vectors. Covariance, correlation. Chebyshev inequality. Law of large numbers. Central limit theorem.
6. Basic notions of statistics. Sample mean, sample variance. Interval estimates of mean and variance.
7. Method of moments, method of maximum likelihood. EM algorithm.
8. Hypotheses testing. Tests of mean and variance.
9. Goodness-of-fit tests.
10. Tests of correlation, non-parametic tests.
11. Discrete random processes. Stationary processes. Markov chains.
12. Classification of states of Markov chains.
13. Asymptotic properties of Markov chains. Overview of applications.
Exercises outlines
1. Elementary probability.
2. Kolmogorov model of probability. Independence, conditional probability, Bayes formula.
3. Mixture of random variables.
4. Mean. Unary operations with random variables.
5. Dispersion (variance). Random vector, joint distribution. Binary operations with random variables.
6. Sample mean, sample variance. Chebyshev inequality. Central limit theorem.
7. Interval estimates of mean and variance.
8. Method of moments, method of maximum likelihood.
9. Hypotheses testing. Goodness-of-fit tests.
10. Tests of correlation. Non-parametic tests.
11. Discrete random processes. Stationary processes. Markov chains.
12. Classification of states of Markov chains.
13. Asymptotic properties of Markov chains.
2. Kolmogorov model of probability. Independence, conditional probability, Bayes formula.
3. Mixture of random variables.
4. Mean. Unary operations with random variables.
5. Dispersion (variance). Random vector, joint distribution. Binary operations with random variables.
6. Sample mean, sample variance. Chebyshev inequality. Central limit theorem.
7. Interval estimates of mean and variance.
8. Method of moments, method of maximum likelihood.
9. Hypotheses testing. Goodness-of-fit tests.
10. Tests of correlation. Non-parametic tests.
11. Discrete random processes. Stationary processes. Markov chains.
12. Classification of states of Markov chains.
13. Asymptotic properties of Markov chains.
Literature
[1] Wasserman, L.: All of Statistics: A Concise Course in Statistical Inference. Springer Texts in Statistics, Corr. 2nd printing, 2004.
[2] Papoulis, A., Pillai, S.U.: Probability, Random Variables, and Stochastic Processes. McGraw-Hill, Boston, USA, 4th edition, 2002.
[3] Mood, A.M., Graybill, F.A., Boes, D.C.: Introduction to the Theory of Statistics. 3rd ed., McGraw-Hill, 1974.
[2] Papoulis, A., Pillai, S.U.: Probability, Random Variables, and Stochastic Processes. McGraw-Hill, Boston, USA, 4th edition, 2002.
[3] Mood, A.M., Graybill, F.A., Boes, D.C.: Introduction to the Theory of Statistics. 3rd ed., McGraw-Hill, 1974.
Requirements
Linear Algebra, Calculus, Discrete Mathematics