2018/2019 KAN-CDASO2040U Predictive Analytics
English Title | |
Predictive 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 BSc/MSc in Business Administration and
Information Systems, MSc
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Course coordinator | |
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The teacher need not be the course responsible person. | |
Main academic disciplines | |
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Teaching methods | |
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Last updated on 15-11-2018 |
Relevant links |
Learning objectives | ||||||||||||||||||||||||||
To achieve the grade of 12, students should meet
the following learning objectives only with no og minor mistakes or
errors. By the end of the course the students should demonstrate:
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Course prerequisites | ||||||||||||||||||||||||||
Knowledge about statistics. | ||||||||||||||||||||||||||
Prerequisites for registering for the exam (activities during the teaching period) | ||||||||||||||||||||||||||
Number of compulsory
activities which must be approved: 3
Compulsory home
assignments
Each assignment is 1-3 pages in group of 1-4 students. The students have to pass 3 out of 5 assignments. There will not be any extra attempts provided to the students before the ordinary exam. If a student cannot hand in due to documented illness, or if a student fails the activity in spite of making a real attempt to pass the activity, then the student will be given one extra attempt before the re-exam. Before the re-exam, there will be one home assignment (10 pages) which will cover all 3 mandatory assignments. |
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Examination | ||||||||||||||||||||||||||
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Course content and structure | ||||||||||||||||||||||||||
Predictive analytics is a field that potentially can provide managers with very valuable tools for decision making. Both for sales variables of firms but also for financial variables like stock prices forecasting models and methods may be of interest, and during the course we will discuss challenges in relation to preparing relevant data for forecasting, choosing well-suited models for analysis and we offer a range of tools for evaluating the forecasting performance of the models we present. In one of the lectures we introduce a tool that can be very helpful for model selection if ‘Big Data’ is available. This course is designed to provide both a theoretical foundation for predictive modeling but also hand-on experience with analyzing economic data. The models presented in the course will belong to different fields of statistics but in all cases the predictive power of the models will be in focus. Introducing statistical tools allows us to not only come up with an actual forecast of an economic variable of interest (think e.g. of sales) but also to assess the uncertainty of the forecast. Before a proper model can be selected it is of interest to discuss issues about data availability and also data reliability. Such topics are often not very much discussed in the text book but providing the students with examples of the types of challenges one may encounter – based on the research of the teachers – will try to fill this gap. |
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Description of the teaching methods | ||||||||||||||||||||||||||
Lectures, in-class exercises during lectures,
exercise classes with tools training.
Feedback on a continuous basis |
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Feedback during the teaching period | ||||||||||||||||||||||||||
On a continous basis in class and through office hours. | ||||||||||||||||||||||||||
Student workload | ||||||||||||||||||||||||||
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Expected literature | ||||||||||||||||||||||||||
Buus Lassen, N., la Cour, L., Vatrapu, R. (2017), ‘Predictive Analytics with Social Media data’ in Sloan & Quan-Haase ed. The SAGE Handbook of Social Media Research Methods, Chapter 20, pp 328-341 (BCV) Hyndman, R.J & Athanasopoulos, G (2014): Forecasting: principles and Practice (maybe a 2nd edition will arrive) (HA) Verbeek, M. (2012): A Guide to Modern Econometrics. 4th edition (or newer) (V) Doornik, J.A. & Hendry, D.F. (2014): Statistical model selection with ‘Big Data’. University of Oxford, Department of Economics, Discussion Paper Series, # 735 (or more recent text in this spirit). (DH) |