Syllabus
Registration via LPIS
Day | Date | Time | Room |
---|---|---|---|
Monday | 10/10/22 | 08:00 AM - 11:00 AM | Online-Einheit |
Monday | 10/17/22 | 11:30 AM - 02:30 PM | TC.1.01 OeNB |
Monday | 10/24/22 | 11:30 AM - 02:30 PM | TC.1.01 OeNB |
Monday | 11/07/22 | 11:30 AM - 02:30 PM | TC.1.01 OeNB |
Monday | 11/14/22 | 11:30 AM - 02:30 PM | Online-Einheit |
Monday | 11/28/22 | 11:30 AM - 02:30 PM | TC.1.01 OeNB |
Monday | 12/12/22 | 11:30 AM - 02:30 PM | Online-Einheit |
Monday | 01/16/23 | 08:30 AM - 10:30 AM | TC.0.10 Audimax |
The course focuses on data-driven decision-making in business and provides an introduction to methods and tools for that purpose. Students learn business analytics in the context of a variety of real-world examples. Thereby, they acquire basic data handling skills and learn how to apply statistical and operations research methods. Special emphasis is put on visualization and interpretation of results.
Topics include:
- Basic Data Handling
- Basic Data Processing and Visualization
- Hypothesis Tests
- Regression Analysis
- Exploratory Factor Analysis
- Simulation
- Optimization
After attending this course, students will be able to understand and apply the principles, methods and tools of business analytics to basic problems. This includes how to:
- Handle big data files in R and Excel
- Use visualization tools to identify patterns and trends
- Formulate and test hypothesis, and interpret their results in a business context
- Apply analysis of variance, regression analysis and exploratory factor analysis, and interpret the results of such analyses to support data driven decision-making in a business context
- Forecast based on historical data
- Develop and apply simulation models for decision support
- Formulate and solve a certain class of decision problems as linear programs
Attendance requirement is met if a student is present for at least 80% of the lectures.
The course is taught using a combination of lectures, class discussions, homework exercises and in-class assignments.
- Homework assignment, 30 points (6 homeworks)
- In-class assignments, 30 points
- Final exam, 40 points
In order to pass the class, you need attend at least 80 % of all classes. If you fulfill these criteria, the following grading scale will be applied:
- Excellent (1): 87.5% - 100.0%
- Good (2): 75.0% - <87.5%
- Satisfactory (3): 62.5% - <75.0%
- Sufficient (4): 50.0% - <62.5%
- Fail (5): <50.0%
For general, administrative questions, please use business-analytics-1@wu.ac.at.
For specific questions concerning certain contents, please contact the individual session-instructor directly via firstname.lastname@wu.ac.at
Please use "[Business Analytics 1] - ..." as subject to your Emails
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