Statistical analysis in research
Field of study: Computer Science
Programme code: W4-N2IN19.2021

Module name: | Statistical analysis in research |
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Module code: | W4-IN-N2-20-1-ASwPB |
Programme code: | W4-N2IN19.2021 |
Semester: |
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Language of instruction: | Polish |
Form of verification: | course work |
ECTS credits: | 2 |
Description: | The purpose of the module is to present the basics of data analysis including: descriptive statistics, graphic methods for the presentation of qualitative and quantitative data, elements of statistical inference.
Content:
1. Descriptive statistics: average measures, measures of variability, dispersion, asymmetry, correlation analysis.
2. Graphic methods for the presentation of qualitative and quantitative data: histogram, frequency diagram, scatter plot, box plot.
3. Elements of statistical inference: concepts of the null and alternative hypothesis, significance level and p-value. Selection of test depending on the hypothesis and the data: Student's t test, Wilcoxon test, Friedman test, Kruskal-Wallis test, Fisher test, chi-square test. |
Prerequisites: | (no information given) |
Key reading: | 1. D.S. Moore, G.P. McCabe, Introduction to the Practice of Statistics, W.H. Freeman & Co., 2000.
2. C. Heumann, M. Schomaker, Shalabh, Introduction to Statistics and Data Analysis, Springer, 2016 |
Learning outcome of the module | Codes of the learning outcomes of the programme to which the learning outcome of the module is related [level of competence: scale 1-5] |
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The student has knowledge about the average measures, the measures of variability, dispersion, asymmetry, correlation analysis and is able to use them. [M_001] |
K_W01 [1/5] |
The student has knowledge about various methods of graphic presentation of qualitative and quantitative data. She\He can choose the appropriate graph for the data and create it. [M_002] |
K_W09 [1/5] |
The student has knowledge about statistical inference. She/He is able to use selected statistical tests to confirm the significance of the hypotheses. She/He can choose the right test depending on the hypothesis and data. [M_003] |
K_W01 [1/5] |
She/He can use the selected program to perform statistical analysis and to confirm the hypotheses. Based on the obtained experimental results, she/he can draw conclusions and confirm their statistical significance. [M_004] |
K_U01 [1/5] |
Type | Description | Codes of the learning outcomes of the module to which assessment is related |
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Examination reports [W_001] | Preparation of written reports and their oral presentation at a specified time as a verification of acquired skills during problems' solving. |
M_001 |
Test [W_002] | Verification of knowledge and skills based on the analysis of tasks solutions during written test. |
M_001 |
Form of teaching | Student's own work | Assessment of the learning outcomes | |||
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Type | Description (including teaching methods) | Number of hours | Description | Number of hours | |
lecture [Z_001] | Lecture presenting concepts and facts from the scope of program contents which are listed in the module and illustrating them with numerous examples |
10 | Self-study of lectures and literature |
20 |
Test [W_002] |
laboratory classes [Z_002] | Laboratory, during which students perform exercises with the help of the teacher, which develop the skills listed in the set of learning outcomes of the module |
10 | Self-improvement of skills listed in the set of learning outcomes of the module |
20 |
Examination reports [W_001] |
Attachments |
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Module description (PDF) |
Syllabuses (USOSweb) | ||
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Semester | Module | Language of instruction |
(no information given) |