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Course info
KMF / ZSTAT
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Course description
Department/Unit / Abbreviation
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KMF
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ZSTAT
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Academic Year
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2023/2024
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Academic Year
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2023/2024
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Title
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Statistics
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Form of course completion
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Examination
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Form of course completion
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Examination
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Accredited / Credits
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Yes,
5
Cred.
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Type of completion
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Combined
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Type of completion
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Combined
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Time requirements
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Lecture
3
[HRS/WEEK]
Tutorial
2
[HRS/WEEK]
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Course credit prior to examination
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Yes
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Course credit prior to examination
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Yes
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Automatic acceptance of credit before examination
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No
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Included in study average
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YES
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Language of instruction
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English
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Occ/max
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Automatic acceptance of credit before examination
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No
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Summer semester
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0 / -
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0 / -
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0 / -
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Included in study average
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YES
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Winter semester
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0 / -
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0 / -
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0 / -
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Repeated registration
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NO
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Repeated registration
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NO
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Timetable
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Yes
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Semester taught
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Winter + Summer
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Semester taught
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Winter + Summer
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Minimum (B + C) students
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not determined
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Optional course |
Yes
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Optional course
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Yes
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Language of instruction
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English
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Internship duration
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0
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No. of hours of on-premise lessons |
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Evaluation scale |
A|B|C|D|E|F |
Periodicity |
každý rok
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Evaluation scale for credit before examination |
S|N |
Periodicita upřesnění |
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Fundamental theoretical course |
No
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Fundamental course |
No
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Fundamental theoretical course |
No
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Evaluation scale |
A|B|C|D|E|F |
Evaluation scale for credit before examination |
S|N |
Substituted course
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KMF/ISTAT
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Preclusive courses
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KAM/ISTAT and KMF/ISTAT
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Prerequisite courses
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N/A
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Informally recommended courses
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N/A
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Courses depending on this Course
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N/A
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Histogram of students' grades over the years:
Graphic PNG
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XLS
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Course objectives:
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The goal is to get the students familiar with the fundamental terms of the theory of probability and the principles of statistical data analysis.
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Requirements on student
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Completion of specified assignments and 40% written test result. Substitutional credit: repeated written test with the same requirement of 40% success rate. Exam: written test with at least 55% result is necessary for a successful pass. The student may ask for an oral examination to achieve a better mark.
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Content
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Statistics - summary
Probability theory Random events and elementary event space. Probability. Axiomatic, classical, geometrical and statistical definition of probability. Conditional probability, independent random events. The complete probability. One-dimensional and multi-dimensional random variable. Continues and discrete random variable. Probability function, probability density function, distribution function. Marginal and conditional distribution. Moments, measures of position and measures of dispersion of one-dimensional and two-dimensional random distribution. Selected distributions of discrete and continuous one-dimensional random variables : two point, binomial, Poisson distribution, uniform, exponential, normal distribution, Chi-square, t, F distribution. Chebyshev theorem, central limit theorem.
Statistical methods Population and random sample. Empirical distribution. Sample moments, sample arithmetic mean, sample variation. Estimation methods.Point estimation. Interval estimation. Confidence intervals for expected value and for variance . Lower and upper control limits. Statistical hypothesis testing.A null hypothesis, an alternative hypothesis, the level of significance of the test, the critical region, one-sided tests, two-sided tests. Testing the hypothesis concerning the expected value of the normal distribution, testing the hypothesis concerning the variance of the normal random variable. The u-test, t-test, F-test. Non-parametric hypothesis testing. The sign test, Wilcoxon test. The chi-square test for goodness of fit. The least square method. Linear regression model by the least square method. Testing significance of regression coefficient and intercept. Confidence intervals of regression coefficient and intercept. Correlation. Measures of dependence. Study of significance of correlations.
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Activities
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Fields of study
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Guarantors and lecturers
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Literature
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Basic:
Kubanová, Jana. Sbírka příkladů z pravděpodobnosti. Bratislava: Statis, 2004. ISBN 80-85659-36-0.
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Basic:
Kubanová J. Statistické metody pro ekonomickou a technickou praxi. Statis Bratislava, 2004. ISBN 80-85659-379.
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Basic:
Kubanová, Jana. Teorie pravděpodobnosti. Pardubice: Univerzita Pardubice, 1999. ISBN 80-7194-193-X.
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Further literature:
Anděl, J. Matematická statistika. SNTL&ALFA, Praha, 1978.
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Further literature:
Kolda,S. Úvod do počtu pravděpodobnosti a matematické statistiky. VŠCHT, Pardubice, 1980.
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Recommended:
Cyhelský, Lubomír. Elementární statistická analýza. Praha: Management Press, 1996. ISBN 80-85943-18-2.
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Recommended:
Hátle, J., Likeš, J. Základy počtu pravděpodobnosti a matematické statistiky. Praha: SNTL, 1974. ISBN 04-311-74.
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Prerequisites - other information about course preconditions |
Knowledge derivatives and integrals ( one and two variables), basic knowledge of logic and how to work with sets, elementary linear algebra. |
Competences acquired |
Capability of statistical data evaluation and interpretation of results. |
Teaching methods |
- Monologic (reading, lecture, briefing)
- Skills training
- Stimulating activities (simulation, games, drama)
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Assessment methods |
- Written examination
- Student performance assessment
- Work-related product analysis
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