SubjectsSubjects(version: 982)
Course, academic year 2026/2027
  
   
Statistical Data Analysis - M143002
Title: Statistická analýza dat
Guaranteed by: Department of Informatics and Chemistry (143)
Faculty: Faculty of Chemical Technology
Actual: from 2023
Semester: winter
Points: winter s.:5
E-Credits: winter s.:5
Examination process: winter s.:
Hours per week, examination: winter s.:2/2, C+Ex [HT]
Capacity: unknown / unknown (unknown)Schedule is not published yet, this information might be misleading.
Min. number of students: unlimited
State of the course: taught
Language: Czech
Teaching methods: full-time
Level:  
Note: course can be enrolled in outside the study plan
enabled for web enrollment
Guarantor: Svozil Daniel prof. Mgr. Ph.D.
Classification: Mathematics > Probability and Statistics
Interchangeability : N143042
Examination dates   Schedule   
This subject contains the following additional online materials
Annotation -
The course introduces fundamental methods of mathematical statistics and their application in data analysis. It covers descriptive statistics, probability and sampling distributions, confidence intervals, hypothesis testing including analysis of variance, and the analysis of relationships using correlation and linear regression.
Last update: Svozil Daniel (05.02.2026)
Course completion requirements -

The credit is given on the completion of an individual project. The final exam is written.

Last update: Svozil Daniel (31.01.2018)
Literature - Czech

Povinná:

Doporučená:

  • An Introduction to R [online]. Dostupné z: http://cran.r-project.org/doc/manuals/r-release/R-intro.pdf
  • Cohen T., Cohen J.Y.. Statistics and Data with R: An applied approach through examples.. : , 2008, s. ISBN 9780470721896.
  • Rumsey D.. Intermediate Statistics for Dummies. : For Dummies, 2007, s. ISBN 0470045205.

Last update: Svozil Daniel (22.04.2026)
Teaching methods -

Lectures and seminars.

Last update: Svozil Daniel (22.04.2026)
Requirements to the exam - Czech

Zápočet je udělen na základě vypracování individuálního projektu. Závěrečná zkouška je písemná.

Last update: Svozil Daniel (31.01.2018)
Syllabus -

1. Descriptive statistics – graphical representation, measures of data centrality

2. Descriptive statistics – measures of variability in data

3. Normal distribution, Z distribution, lognormal distribution

4. Sampling distribution and the central limit theorem

5. Confidence interval

6. Hypothesis testing – critical region, one-tailed and two-tailed tests

7. Hypothesis testing – tests of the mean

8. Hypothesis testing – analysis of variance (ANOVA)

9. Covariance and correlation analysis

10. Linear regression – simple

11. Linear regression – multiple

12. Reserve

13. Summary

14. Early exam date

Last update: Svozil Daniel (05.02.2026)
Learning resources -

Online course materials at UCT e-learning.

Online textbooks:

OpenIntro Statistics

OnlineStatBook

Hyperstat

StatPrimer

Last update: Svozil Daniel (06.02.2026)
Learning outcomes -

Students will be able to:

  • apply descriptive statistical methods, including graphical data representation and the calculation of measures of central tendency and variability,
  • explain the properties of basic probability distributions and use the central limit theorem when working with sampling distributions,
  • construct and interpret confidence intervals for selected statistical characteristics,
  • perform and interpret statistical hypothesis testing, including tests of means and analysis of variance (ANOVA),
  • analyze relationships between variables using covariance, correlation, and simple as well as multiple linear regression.
  • use the R software (environment for statistical computing)
  • do the exploratory analysis and hypotheses testing in R
  • do the regression analysis in R
  • analyze multidimensional data in R
  • present results of statistics analysis using graphical capabilities of R

Last update: Svozil Daniel (05.02.2026)
Registration requirements -

Mathematics

Last update: Svozil Daniel (05.02.2026)
Teaching methods
Activity Credits Hours
Účast na přednáškách 1 28
Příprava na přednášky, semináře, laboratoře, exkurzi nebo praxi 1 28
Práce na individuálním projektu 1 28
Příprava na zkoušku a její absolvování 1 28
Účast na seminářích 1 28
5 / 5 140 / 140
 
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