2023/2024 KAN-CGMAO2003U Business Analytics
English Title | |
Business Analytics |
Course information |
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Language | English |
Course ECTS | 7.5 ECTS |
Type | Mandatory |
Level | Full Degree Master |
Duration | One Semester |
Start time of the course | Spring |
Timetable | Course schedule will be posted at calendar.cbs.dk |
Study board |
Study Board for cand.merc. and GMA (GMA)
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Course coordinator | |
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Main academic disciplines | |
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Teaching methods | |
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Last updated on 06-06-2023 |
Relevant links |
Learning objectives | ||||||||||||||||||||||||
By the end of the course, students will be able
to:
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Prerequisites for registering for the exam (activities during the teaching period) | ||||||||||||||||||||||||
Number of compulsory
activities which must be approved (see section 13 of the Programme
Regulations): 1
Compulsory home
assignments
The student must obtain approval for 1 out of 2 possible group assignments in order to attend the ordinary exam. The assignment can be completed by groups of 4 or 5 students, and it can consist of up to 9 pages per group. Assessments will be conducted on a pass/fail basis. Students will have no extra opportunities to get the required number of compulsory activities approved prior to the regular exam. If a student has not received approval for the required number of compulsory activities or has been ill, the student cannot participate in the ordinary exam. If, prior to the retake exam, a student has still not been approved for the required number of compulsory activities but otherwise meets the preconditions set out in the program regulations, completing an extra assignment instead is possible. The extra assignment is a 10-page home assignment that covers the required number of compulsory activities. If the completed assignment is approved, the student will be able to attend the retake. |
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Examination | ||||||||||||||||||||||||
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Course content, structure and pedagogical approach | ||||||||||||||||||||||||
Business analytics is a multidisciplinary field that uses data, statistical algorithms, and predictive models to identify and forecast business outcomes. It helps businesses make more informed decisions by providing insights based on data rather than on intuition or subjective interpretation.
Business analytics is important because it enables:
Business analytics helps businesses to make more informed and strategic decisions, improve efficiency, and stay competitive in a rapidly changing business environment.
This course focuses on how applying quantitative analytical models can develop insights that are derived from data and that inform decision-making. The aim is to provide students with the competencies necessary to develop solutions to business problems that general managers and business analysts frequently encounter and to discuss the implications of these solutions.
This course will focus on real-world applications of business analytics and examine how its methods have transformed firms and industries. We will discuss Moneyball, the Framingham Heart Study, Google, Twitter, IBM Watson, and Netflix, and many other examples.
The course focuses on skills relevant to business decision-making. It introduces students to methods and approaches applied in business analytics. This includes practical applications of topics such as data manipulation and visualization, descriptive statistics and hypothesis testing, optimization (linear and nonlinear), regression analysis, time series analysis, and advanced topics in business analytics (eg, geospatial analysis and network analysis). Students are trained to collect, structure, analyze and visualize data. The course explores general management problems through a number of cases and exercises. |
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Description of the teaching methods | ||||||||||||||||||||||||
Business problems are the starting point for
business analytics, and the course adopts a decision-driven
approach consisting of four steps: Framing the question, Assembling
the data, Calculating the results by implementing the analytical
model, and Telling others the results and discussing the
implications (the FACT framework). For each topic we cover, we
discuss several examples. Teaching is practically oriented.
Although the lectures frame business problems, the exercises focus on assembling the data, calculating the results, and telling the results. Exercises allow students to acquire a better understanding of the type of data and analytical methods needed to reach a solution for the business problem being considered. The implications of data quality and data neutrality and how these affect the solution of the problem are also thoroughly explored using in-class exercises and assignments. The teaching method ensures the participation of students. |
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Feedback during the teaching period | ||||||||||||||||||||||||
Feedback will be offered in three ways. First, students will receive feedback during lectures in the form of interaction with the teacher if any question arises. Second, students will receive one-on-one feedback during workshops in response to their inquiries. Students can also ask instructors to clarify the course content in relation to exercises, workshops, and the overall curriculum. Third, students will receive summative feedback during the workshops that addresses the challenges perceived during the one-on-one interaction. Students are expected to actively participate in lectures, workshops, and exercises. Additional individual feedback can be obtained during office hours. | ||||||||||||||||||||||||
Student workload | ||||||||||||||||||||||||
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Expected literature | ||||||||||||||||||||||||
A full list of relevant literature will be provided in class. The following works are indicative:
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