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2026/2027  BA-BMAKV2601U  Advanced Marketing Analytics

English Title
Advanced Marketing Analytics

Course information

Language English
Course ECTS 7.5 ECTS
Type Elective
Level Bachelor
Duration One Quarter
Start time of the course First Quarter
Timetable Course schedule will be posted at calendar.cbs.dk
Study board
Study Board for Service and Markets
Programme BSc in Business Administration and Market Dynamics and Cultural Analysis
Course coordinator
  • Felix Eggers - Department of Marketing (Marketing)
Main academic disciplines
  • Marketing
  • Statistics and quantitative methods
  • Strategy
Teaching methods
  • Blended learning
Last updated on 29-01-2026

Relevant links

Learning objectives
After successful completion of the course, students will be able to:
  • Understand core concepts of marketing analytics, including how data-driven analysis can inform decisions in key marketing domains.
  • Apply quantitative and qualitative methods to marketing problems: use appropriate analytical techniques to analyze marketing data and generate insights.
  • Design and conduct marketing analytics projects: formulate a marketing question, select suitable analytical tools, and utilize software to analyze data in order to answer that question.
  • Critically evaluate analytical results and assumptions when making marketing recommendations.
  • Communicate insights effectively: present the findings of marketing analytics in a clear, professional manner by translating data analysis results into actionable recommendations.
Course prerequisites
Basic knowledge of statistics is required (understanding of descriptive statistics, correlation, and simple regression analysis). The course makes use of the R statistical software for data analysis. While prior experience with R or programming is an advantage, it is not a formal requirement, as the necessary coding skills will be taught and practiced during the course.
Examination
Advanced Marketing Analytics:
Exam ECTS 7,5
Examination form Home assignment - written product
Individual or group exam Individual exam
Size of written product Max. 10 pages
Assignment type Case based assignment
Release of assignment The Assignment is released in Digital Exam (DE) at exam start
Duration 72 hours to prepare
Grading scale 7-point grading scale
Examiner(s) One internal examiner
Exam period Autumn
Make-up exam/re-exam
Same examination form as the ordinary exam
If the student fails or does not attend the ordinary exam, the student will be given a retake exam that is different but structurally similar to the ordinary exam.
Course content, structure and pedagogical approach

Marketing decisions are increasingly data-driven. This course introduces students to advanced Marketing Analytics, which links classic marketing concepts to analytical methods. Students will learn how marketing strategy and the marketing mix (promotion, product, price, and place) can be supported by quantitative and qualitative analyses, and how insights can be generated from data to guide managerial decision-making.

 

The course begins with an introduction to marketing strategy. Students revisit the concepts of segmentation, targeting, and positioning (STP) and learn how to identify customer groups using data. Techniques such as cluster analysis and related methods are applied to uncover distinct market segments. Students will practice how to evaluate and interpret these segments, and how segmentation can form the basis for effective targeting and positioning.

 

The next part of the course follows the structure of the marketing mix (the 4Ps) and demonstrates how analytics can be applied in each area:

 

  • Promotion: Students examine how the effectiveness of marketing communications and campaigns can be measured. Key methods include A/B testing to assess campaign variations. The module also introduces text and sentiment analysis of customer reviews, social media, and other unstructured data formats, allowing firms to track how promotions influence customer attitudes.
  • Product: Students are introduced to conjoint analysis, a method widely used in practice to measure customer preferences for product features. They learn how to design and analyze conjoint studies, and how results can guide product design, feature prioritization, and innovation decisions.
  • Price: The course covers different pricing strategies and focuses on price elasticity of demand as a key concept. Students learn how to estimate price elasticities from sales data, use different regression models to derive demand curves, and apply these insights to practical pricing problems.
  • Place (Distribution): Distribution will be analyzed in terms of customer journeys across multiple touchpoints. Students learn how to evaluate performance across physical stores, e-commerce, and digital channels. The central method here is attribution modeling, which assigns credit for conversions to different touchpoints along the customer journey.

 

The course incorporates emerging methods, including the use of Generative AI for marketing analytics. Students will learn how AI tools can support and administer the analyses, while also reflecting on their limitations and ethical challenges.

Research-based teaching
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
  • Classic and basic theory
  • Teacher’s own research
  • Methodology
  • Models
Research-like activities
  • Data collection
  • Analysis
  • Discussion, critical reflection, modelling
  • Activities that contribute to new or existing research projects
  • Students conduct independent research-like activities under supervision
Description of the teaching methods
The course is based on a mix of online, prerecorded lectures and attendance of exercise sessions. Online lectures explain marketing concepts and analytical methods, while exercise sessions focus on applying these methods hands-on. Students will analyze datasets, interpret results, and discuss their managerial implications. Discussions and exercises can be based on group work.
Feedback during the teaching period
The teacher will give feedback to student discussions and exercises in class. Additional office hours will be provided for individual feedback. Online, prerecorded lectures will be accompanied with quizzes.
Student workload
Lectures including preparation 70 hours
Exercises including preparation 70 hours
Exam including preparation 66 hours
Expected literature

Chapman, Chris, and Elea McDonnell Feit. R for marketing research and analytics. Vol. 67. New York, NY: Springer, 2015.

 

Additional literature will be shared via Canvas before the course starts. 

Last updated on 29-01-2026