Data analysis in business
Field of study: Computer Science
Programme code: 08-S2INIA15.2019

Module name: | Data analysis in business |
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Module code: | 08-IN-ISI-S2-ADwB |
Programme code: | 08-S2INIA15.2019 |
Semester: | summer semester 2020/2021 |
Language of instruction: | English |
Form of verification: | course work |
ECTS credits: | 2 |
Description: | Analysis of business data aims at developing skills of using statistical population characteristics and constructing and using data mining for data analysis. The goal of the subject is also perfecting the knowledge of classic and modern techniques of data analysis on the example of financial data. The following topics are planned to realize:
1. Gathering, development and graphic presentation of data.
2. Elements of business data descriptive analysis.
3. Analysis of phenomena interdependence, correlation and regression.
4. Use of technical and fundamental analyses for financial data analysis.
5. Use of issues connected with Fibonacci and Pivot levels.
6. Use of neural networks for business data analysis.
Aim of the classes is educating students’ skills of using the most important methods used in data mining.
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Prerequisites: | (no information given) |
Key reading: | (no information given) |
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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Student can obtain information from literature, databases and other properly selected sources, can integrate the information obtained, interpret them, draw conclusions and formulate and justify the opinions. [ADwB -U_3] |
K_U01 [2/5] |
Student can provide a mathematical description of a selected technical indicator for data analysis. [ADwB -U_4] |
K_U07 [1/5] |
Student can use the available programs to perform data exploration. [ADwB -U_5] |
K_U17 [4/5] |
Student has knowledge of average measure, measure of variability and measure of asymmetry to perform descriptive analysis of business data. The student uses issues of interdependence analysis and correlation and regression analyses to study dependencies occurring in business data. [ADwB -W_1] |
K_W03 [2/5] |
Student is knowledgeable about preliminary data preparation and application of classifier k nearest neighbors, naive Bayesian classifier, classifier classification and regression classifier, neural networks, basket analysis and data analysis sequences. [ADwB -W_2] |
K_W17 [4/5] |
Type | Description | Codes of the learning outcomes of the module to which assessment is related |
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Continuous assessment [ADwB _w_1] | Verifying according to answers to the asked questions concerning lectured topics and knowledge of homeworks solutions |
ADwB -U_3 |
Written tests [ADwB _w_2] | Verification of skills on the basis of solved tasks analysis during written tests with use of computer. |
ADwB -U_3 |
Written elaboration [ADwB _w_3] | Skills verification through written elaboration of the material connected with performing data set analysis and interpretation of obtained results |
ADwB -U_3 |
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 [ADwB _fs_1] | Lecture presenting notions and facts from the range of program content mentioned in module description and illustrating the content with numerous examples |
10 | Independent study of lectures and ancillary literature indicated in the syllabus |
10 |
Continuous assessment [ADwB _w_1] |
laboratory classes [ADwB _fs_2] | A laboratory where students perform exercises with skill-building exercises listed in the module learning outcomes. |
20 | Self-improvement skills listed in the effects set |
20 |
Continuous assessment [ADwB _w_1] |
Attachments |
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Module description (PDF) |
Syllabuses (USOSweb) | ||
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Semester | Module | Language of instruction |
(no information given) |