Syllabus

Title
1680 Retail Marketing Analytics
Instructors
Daria Yudaeva, MSc (WU)
Contact details
Type
PI
Weekly hours
2
Language of instruction
Englisch
Registration
09/18/24 to 09/23/24
Registration via LPIS
Notes to the course
Dates
Day Date Time Room
Thursday 10/17/24 08:00 AM - 11:00 AM TC.5.27
Thursday 10/24/24 08:00 AM - 11:00 AM TC.5.27
Thursday 11/07/24 08:00 AM - 11:00 AM TC.5.27
Thursday 11/14/24 08:00 AM - 11:00 AM TC.5.27
Thursday 11/21/24 08:00 AM - 11:00 AM TC.5.27
Thursday 11/28/24 08:00 AM - 11:00 AM TC.5.27
Thursday 12/05/24 08:00 AM - 11:00 AM TC.5.27
Thursday 12/12/24 08:00 AM - 10:00 AM D5.0.002
Contents

Data-driven marketing has become increasingly important in recent years due to digitalization, (relatively) easy availability of large data sets, and wide opportunities for new data collection. In both offline and online retail, data can be collected and analyzed to improve marketing activities of all types. With the help of appropriate data analysis methods, the effectiveness of marketing measures can be quantified to generate meaningful recommendations for retail marketing managers. To utilize this potential, however, a sound understanding of modern analysis methods and their implementation using state-of-the-art software is required.

This course introduces the theories, processes, and analysis methods of a modern, data-driven marketing approach. Through practical applications of the methods in different contexts, a direct practical relevance is created to illustrate the relevance for various applications, such as marketing mix planning, market segmentation, brand positioning, and new product development.

Learning outcomes

After completing the course, students will be able to

  • derive relevant research questions concerning business objectives and assess them in terms of management relevance;
  • assess different research designs about their suitability in relation to the research objective (description, prediction, causal inference);
  • analyze relationships between variables based on observational data;
  • understand the basics of methods from the fields of supervised and unsupervised statistical learning (e.g. regression, classification, cluster analysis);
  • implement analysis methods using the state-of-the-art statistical software R;
  • interpret the results of statistical analyses and translate them into relevant implications as a decision-making aid for managers;
  • present the results of statistical analyses and communicate them to various stakeholders.
Attendance requirements

Attendance is compulsory in all course units. To pass the course, you must be present for at least 80% of the time in the units. If you are unable to attend a unit, please inform the course instructor before the unit. The content covered in a missed unit must be made up independently.

Teaching/learning method(s)

The course integrates theoretical knowledge with practical applications through a combination of interactive lecture units with discussions, analysis of business cases, a group project, and home computer exercises. Please note that the teaching of the content is partly based on the flipped classroom principle, i.e., the content must be worked on as preparation for the units in self-study based on the materials provided. In particular, an online script with explanatory texts and videos is provided for this purpose. In order to be prepared for the weekly units, the content of the respective week must be worked through. During the on-campus units, we focus on problem-solving and practical applications. For the participation grade, it is important to actively participate in the units and the discussions and to ask questions about the material if necessary. 

The weekly materials are supplemented by case studies and computer exercises aimed at knowledge transfer. The home computer exercises must be submitted via the Canvas platform by the specified deadline. In addition, the course includes a group project in which students have to analyze a provided data set to draw managerial recommendations. There will be an online forum to facilitate interaction between students and to clarify questions.

The course includes practical applications of data analysis with the statistical software R. R is an open-source software and can therefore be installed and used free of charge. It is recommended to use R via the integrated development environment and graphical user interface RStudio:

Please also use the various free online materials (e.g., http://r4ds.had.co.nz/). 

Assessment

The assessment is based on the following components: 

  • Retail Marketing Project (group project: data analysis & presentation) - 40%
  • Computer exercises (statistical analysis of data sets) - 20%
  • Final exam (concepts & methods) - 30%
  • Participation (weekly tests & in-class activity) - 10%
In order to ensure equal contribution to the group project, its grade consists of individual component (1/3) and group component (2/3).

To successfully complete the course, the final grade must be at least 60%.

Prerequisites for participation and waiting lists

It is recommended to review courses on statistics and marketing.

Readings

Please log in with your WU account to use all functionalities of read!t. For off-campus access to our licensed electronic resources, remember to activate your VPN connection connection. In case you encounter any technical problems or have questions regarding read!t, please feel free to contact the library at readinglists@wu.ac.at.

Availability of lecturer(s)

I am happy to answer questions via the online discussions on Canvas or by email (daria.yudaeva@wu.ac.at). However, if you have specific methodological questions, please try to find answers first using the materials provided (e.g. the online tutorial).

Last edited: 2024-08-27



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