FI:MB143 Des. and anal. of experiments - Course Information
MB143 Design and analysis of statistical experiments
Faculty of InformaticsSpring 2025
- Extent and Intensity
- 2/2/0. 3 credit(s) (plus extra credits for completion). Type of Completion: zk (examination).
In-person direct teaching - Teacher(s)
- doc. Mgr. David Kraus, Ph.D. (lecturer)
RNDr. Radim Navrátil, Ph.D. (seminar tutor)
RNDr. Bc. Iveta Selingerová, Ph.D. (seminar tutor)
Mgr. Markéta Trembaczová (seminar tutor)
Mgr. Andrea Kraus, M.Sc., Ph.D. (assistant) - Guaranteed by
- doc. Mgr. David Kraus, Ph.D.
Department of Mathematics and Statistics – Departments – Faculty of Science
Supplier department: Department of Mathematics and Statistics – Departments – Faculty of Science - Prerequisites
- ( MB141 Linear alg. and discrete math || MB142 Applied math analysis || MB151 Linear models || MB152 Calculus ) && ! MB153 Statistics I && !NOW( MB153 Statistics I )
MB143 is a lightweight version of MB153, so it can be replaced by completing the full course. - Course Enrolment Limitations
- The course is also offered to the students of the fields other than those the course is directly associated with.
- fields of study / plans the course is directly associated with
- Image Processing and Analysis (programme FI, N-VIZ)
- Bioinformatics and systems biology (programme FI, N-UIZD)
- Computer Games Development (programme FI, N-VIZ_A)
- Computer Graphics and Visualisation (programme FI, N-VIZ_A)
- Computer Networks and Communications (programme FI, N-PSKB_A)
- Cybersecurity Management (programme FI, N-RSSS_A)
- Formal analysis of computer systems (programme FI, N-TEI)
- Graphic design (programme FI, N-VIZ)
- Graphic Design (programme FI, N-VIZ_A)
- Hardware Systems (programme FI, N-PSKB_A)
- Hardware systems (programme FI, N-PSKB)
- Image Processing and Analysis (programme FI, N-VIZ_A)
- Information security (programme FI, N-PSKB)
- Informatics (programme FI, B-INF) (2)
- Informatics in education (programme FI, B-IVV) (2)
- Information Security (programme FI, N-PSKB_A)
- Quantum and Other Nonclassical Computational Models (programme FI, N-TEI)
- Computer graphics and visualisation (programme FI, N-VIZ)
- Computer Networks and Communications (programme FI, N-PSKB)
- Principles of programming languages (programme FI, N-TEI)
- Programming and development (programme FI, B-PVA)
- Cybersecurity management (programme FI, N-RSSS)
- Services development management (programme FI, N-RSSS)
- Software Systems Development Management (programme FI, N-RSSS)
- Services Development Management (programme FI, N-RSSS_A)
- Software Systems Development Management (programme FI, N-RSSS_A)
- Software Systems (programme FI, N-PSKB_A)
- Software systems (programme FI, N-PSKB)
- Machine learning and artificial intelligence (programme FI, N-UIZD)
- Teacher of Informatics and IT administrator (programme FI, N-UCI)
- Informatics for secondary school teachers (programme FI, N-UCI) (2)
- Computer Games Development (programme FI, N-VIZ)
- Processing and analysis of large-scale data (programme FI, N-UIZD)
- Natural language processing (programme FI, N-UIZD)
- Course objectives
- The course presents principles and methods of statistical analysis, and explains what types of data are suitable for answering questions of interest.
- Learning outcomes
- After the course the students:
- are able to formulate questions of interest in terms of statistical inference (parameter estimation or hypothesis test within a suitable model);
- are able to choose a suitable model for basic types of data, choose a suitable method of inference to answer most common questions, implement the method in the statistical software R, and correctly interpret the results;
- are able to judge which questions and with what accuracy/certainty can be answered based on available data, or suggest what data should be collected in order to answer given questions with a desired level of accuracy/certainty. - Syllabus
- Basic principles of Probability.
- Random variables, their characteristics and mutual relationships.
- Properties of functions of random variables.
- Data as realisations of random variables.
- Descriptive statistics and the choice of a suitable model.
- Point and interval estimation: the framework and most common methods.
- Hypotheses testing: the framework and most common methods.
- Linear regression, Analysis of variance, Analysis of covariance.
- Methods of data collection, their purpose, scope and limitations.
- Design of experiment.
- Literature
- recommended literature
- CASELLA, George and Roger L. BERGER. Statistical inference. 2nd ed. Pacific Grove, Calif.: Duxbury, 2002, xxviii, 66. ISBN 0534243126. info
- MILLIKEN, George A. and Dallas E. JOHNSON. Analysis of messy data. Second edition. Boca Raton: CRC Press, 2009, xiii, 674. ISBN 9781584883340. info
- ZVÁRA, Karel and Josef ŠTĚPÁN. Pravděpodobnost a matematická statistika [Zvára, 2001]. 2. vyd. Praha: Matfyzpress, 2001, 230 s. ISBN 80-85863-76-6. info
- ANDĚL, J. Základy matematické statistiky. Praha: MFF UK, 2005. info
- ANDĚL, Jiří. Statistické metody. 1. vyd. Praha: Matfyzpress, 1993, 246 s. info
- FORBELSKÁ, Marie and Jan KOLÁČEK. Pravděpodobnost a statistika I. 1. vyd. Brno: Masarykova univerzita, 2013. Elportál. ISBN 978-80-210-6710-3. url info
- FORBELSKÁ, Marie and Jan KOLÁČEK. Pravděpodobnost a statistika II. 1. vyd. Brno: Masarykova univerzita, 2013. Elportál. ISBN 978-80-210-6711-0. url info
- Teaching methods
- Lectures: 2 hours a week; focused on explanation of terms, principles and methods.
Exercise sessions: 2 hours a week; focused on deeper understanding of the principles and methods, on their application to data using the statistical software R, and on interpretation of the obtained results. - Assessment methods
- During the semester: two homework assignments worth 40 points in total. After the semester: a written exam worth 60 points. The final grade depends on the sum S of the points for assignments and for the written exam. The minimum required to pass is 51 points. Score-to-grade conversion: A for S in [91,100], B for S in [81,90], C for S in [71,80], D for S in [61,70], E for S in [51,60], F for S in [0,50].
- Language of instruction
- Czech
- Follow-Up Courses
- Further Comments
- The course is taught annually.
The course is taught: every week. - Listed among pre-requisites of other courses
- Teacher's information
- https://is.muni.cz/auth/el/fi/jaro2024/MB143/index.qwarp
- Enrolment Statistics (recent)
- Permalink: https://is.muni.cz/course/fi/spring2025/MB143