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Motivation
Data science approaches are based on statistical/mathematical methods as well as computer science competences. In this context, it is crucial to understand the basic principles of statistical methods. This will help to adequately apply statistical methods and to produce reliable statistical results.
Learning contents
This course provides an introduction into statistical basics and concepts relevant for data science applications. After a brief presentation of the categories of statistics (descriptive, predictive, confirmatory) and their general ideas, selected basic methods will be explained and illustrated by practical examples: concept of probability, parameter estimation, confidence intervals and testing of hypotheses.
Learning outcomes
A basic understanding of the major statistical principles.
Prior knowledge
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Further reading
- Fahrmeir, Heumann, Künstler, Pigeot, Tutz (2016). Statistik – Der Weg zur Datenanalyse, 8. Auflage, Springer-Verlag, Berlin, Heidelberg.
- Fahrmeir, Künstler, Pigeot, Tutz, Caputo, Lang (2009). Arbeitsbuch Statistik, 5. Auflage, Springer-Verlag, Berlin, Heidelberg.
- Freedman, Pisani, Purves (1998). Statistics, 3rd edition, W.W. Norton and Company, New York.
- Spiegelhalter (2019). The Art of Statistics: Learning from Data, Pelican, London.
Data Train / U Bremen Research Alliance