2023/2024 KAN-CIBSO1061U Applied Business Research
English Title | |
Applied Business Research |
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 | Autumn |
Timetable | Course schedule will be posted at calendar.cbs.dk |
Study board |
Study Board for cand.merc. and GMA (CM)
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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 01-06-2023 |
Relevant links |
Learning objectives | ||||||||||||||||||||||||
At the end of the course you should be able to:
• Calculate and interpret summary and comparative measures of the data. • Distinguish among different types of quantitative data (categorical, continuous, etc.) and recognize the types of information they provide and their limitations. • Recognize the main types of distributions, how they relate to the nature of data at hand, and how to use them in statistical analysis. • Draw inferences about population characteristics from samples. • Recognize the key features of statistical testing (significance, power, confidence intervals) and conduct statistical tests on data. • Understand the concepts of correlation, partial correlation, single- and multivariate regression, and conduct tests related to such regressions, including residual analysis. • Generate and interpret the output from pre-developed software packages. • Discuss and recommend solutions to problems encountered in the analysis of a specific phenomenon. • Perform hypotheses testing of both simple and more composite hypotheses. • Report and interpret the results of the analysis clearly and effectively to a reader who does not have a technical background in statistics and econometrics. • Use longitudinal data for panel data regression. • Make recommendations based upon the results of the analysis. • Understand the assumptions of difference-in-difference estimation designs and randomized controlled experiments and interpret relevant outputs. |
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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
In order to qualify for the final exam, the students must get 1 out of 2 activities described below approved. All activities are individual. Further, they are independent, i.e., completion of one activity is not conditional on completion of the others. 1. Activity 1 – Problem Set 1 The students will receive a problem set consisting either of one long or two shorter problems, and the associated data set(s). They will be required to perform different types of statistical analyses and answer a set of questions based on the analyses. The deliverables include the R code to perform the analyses, the R output and a maximum 5 pages long document with answers to the questions. 2. Activity 2 – Problem Set 2 The students will receive a problem set consisting either of one long or two shorter problems, and the associated data set(s). They will be required to perform different types of statistical analyses and answer a set of questions based on the analyses. The deliverables include the R code to perform the analyses, the R output, and a maximum 5 pages long document with answers to the questions. Students will not have extra opportunities to get the required number of compulsory activities approved prior to the ordinary exam. If a student has not received the approval of the required number of compulsory activities or has been ill, the student cannot participate in the ordinary exam. If a student prior to the retake is still missing approval for the required number of compulsory activities and meets the pre-conditions set out in the program regulations, an extra assignment is possible. The extra assignment is a 10-page home assignment that will cover the required number of compulsory activities. If approved, the student will be able to attend retake |
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Examination | ||||||||||||||||||||||||
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Course content, structure and pedagogical approach | ||||||||||||||||||||||||
This course will introduce students to key methods of
quantitative analysis that are widely applied in business and
economic research. Topics covered include, among others,
representing quantitative data, characterizing the data using
numerical and graphic representations, performing tests and drawing
inference from them, recognizing potential weaknesses and / or
pitfalls of quantitative analysis, and using data for business
decision making such as forecasting. The purpose of the course is
to make students educated users of quantitative analysis by
introducing the main theoretical concepts and issues rather than
giving you extensive training in the underlying mathematical and
statistical theory. The course emphasizes how to apply various
statistical techniques in the support of decisions in the various
functional areas of business and economics.
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Description of the teaching methods | ||||||||||||||||||||||||
Teaching methods: The course consists of 12 lectures, plus 6 tutorials and an introductory session to R. A detailed plan of topics to be covered in each lecture, as well as respective readings for each topic, will be presented in the course syllabus to be made available before the start of the course. Lectures focus on presenting theory and insights, although numerical examples will be presented to help better understanding of theoretical concepts. On the other hand, tutorials focus exclusively on applying the concepts to concrete examples using real-world data. The tutorials also provide the hands-on experience to problem-solving. | ||||||||||||||||||||||||
Feedback during the teaching period | ||||||||||||||||||||||||
During the tutorial sessions, the instructor provides extensive feedback on the problem sets. Additionally, the lecturers provide feedback on small tasks to perform in class, and collective feedback on each one of the mandatory assignments. | ||||||||||||||||||||||||
Student workload | ||||||||||||||||||||||||
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Expected literature | ||||||||||||||||||||||||
- Békés, G. and Kézdi, G. (2021), Data Analysis for Business, Economics and Policy, Cambridge University Press. - Instructor PP slides and supplementary notes, if necessary. - "Swirl" package in R for algorithm-led interactive learning.
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