2025/2026 BA-BHAAI1108U Introduction to Econometrics with R
| English Title | |
| Introduction to Econometrics with R |
Course information |
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| Language | English |
| Course ECTS | 7.5 ECTS |
| Type | Elective |
| Level | Bachelor |
| Duration | Summer |
| Start time of the course | Summer |
| Timetable | Course schedule will be posted at calendar.cbs.dk |
| Min. participants | 30 |
| Max. participants | 100 |
| Study board |
Study Board for General Management
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| Programme | Bachelor of Science in Economics and Business Administration |
| Course coordinator | |
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| Last updated on 20/11/2025 | |
Relevant links |
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| Course prerequisites | ||||||||||||||||||||||||
| Knowledge of the statistical language R is not required. | ||||||||||||||||||||||||
| Examination | ||||||||||||||||||||||||
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| Course content, structure and pedagogical approach | ||||||||||||||||||||||||
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Quantitative analysis is increasingly used for problem solving in economics, business, and finance. However, a skillful analysis requires profound knowledge of the underlying statistical methods and statistical programming skills.
The objective of this course is to introduce you to fundamental concepts of econometrics and data analysis that form the basis for data driven decision making, empirical analysis of causal relationships, and forecasting, and to sharpen your technical skills for problem solving at workplace and in other real-life settings.
The concepts that you will learn in this course will equip you with skills and knowledge necessary to excel in more advanced econometrics and applied statistics courses at CBS (e.g., BA-BMECV1031U Econometrics, KAN-COECO1058U Econometrics, KAN-COECO1056U Financial Econometrics, KAN-CMECV1249U Panel Econometrics) and elsewhere.
The course will also introduce you to programming with R, the main programming language for statistical computing. We will begin with basic R operations and gradually progress to writing our own functions.
Throughout the semester, we will work with real data on 911 calls to the New York City Police Department. In each class, we will analyze a different aspect of the dataset, allowing us to become familiar with its structure, identify data anomalies, learn how to address them, and use econometric tools to extract important insights, assess credibility, avoid over- or under-selling results, and draw meaningful conclusions. By the end of the course, you will be well on your way to becoming a confident statistical programmer, with the ability to apply the tools you learn to any dataset of your choice. |
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| Research-based teaching | ||||||||||||||||||||||||
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CBS’ programmes and teaching are research-based. The following
types of research-based knowledge and research-like activities are
included in this course:
Research-based knowledge
Research-like activities
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| Description of the teaching methods | ||||||||||||||||||||||||
| A word from the lecturer:
“I will briefly introduce new concepts and demonstrate each one with examples, after which we will apply the concepts to learn something new from our data. Each lecture will be hands-on, and I hope you will ask questions and actively participate. At least half of every class will be devoted to demonstrating and practicing the course material in R. The remaining time will be spent solving problems individually, in groups, or on the whiteboard. After each class, you will receive voluntary homework assignments. These will not be graded, but if you choose to submit them, I will provide individual feedback. The homework will follow the same structure as the final exam, making it excellent preparation. Moreover, towards the end of the semester I will provide you with a mock final exam for practice. The course consists of 38 hours of lectures, exercises, and lab sessions. My teaching approach is lecture-based but highly interactive. In particular, I will: 1. Keep lessons brief and focused. 2. Allocate time for questions. 3. Use visual cues to support learning. 4. Explain new concepts with clear examples. 5. Provide solutions to homework and in-class exercises. 6. Encourage active class participation. 7. Promote collaborative problem-solving and teamwork. Hope to see many of you there!” |
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| Feedback during the teaching period | ||||||||||||||||||||||||
| • Weekly on-campus office hours.
• Virtual office hours by appointment. • Email correspondence. • Feedback on homework. |
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| Further Information | ||||||||||||||||||||||||
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Precourse activity:
At the end of May, the course coordinator will upload the precourse activity on Canvas. Students are expected to complete it, as it will be included in the final exam. However, the assignment will not be graded independently.
The precouse activity will consist of: A math and statistics refresher
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| Expected literature | ||||||||||||||||||||||||
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Supplementary literature:
Statustics : A Modern Introduction to Probability and Statistics Understanding Why and How by F.M. Dekking, C. Kraaikamp, H.P. Lopuhaae, and L.E. Meester
Programing in R : R Programming for Beginners: An Introduction to Learn R Programming with Tutorials and Hands-On Examples ny N. Metzler
Calculus: A Complete Introduction - The Easy Way to Learn Algebra by Hugh Neill
Matrices : Elementary Linear Algebra (10th ed.) by H. Anton and C. Rorres |
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