20723 - MARKETING ANALYTICS
Department of Marketing
ANDREA ORDANINI
Mission & Content Summary
MISSION
CONTENT SUMMARY
The course is based on applying marketing analytics principles to a set of strategic marketing decisions:
1 - Customer Value Assessment (CLV)
2 - Segmentation and Targeting
3 - Market positioning
4 - Forecasting model for product diffusion
5 - Product choice: conjoint models
6 - Price setting
7 - Promotion budget optimization
8 - Sentiment analysis
All these topics will be treated conceptually (what is), analytically (what data and analysis are needed) and empirically (what decisions should be concretely taken).
Intended Learning Outcomes (ILO)
KNOWLEDGE AND UNDERSTANDING
- Understand the conceptual roots of key marketing decisions
- Learn which data and information are necessary to set up an analytical decision making process
- Know how to analyze quantitative data to arrive at a profitable decision
APPLYING KNOWLEDGE AND UNDERSTANDING
- Identify the challenges associated to the key strategic marketing decisions
- Set up and frame the data to inform a marketing decision making process
- Make sense of the collected data mastering the proper implementation of quantitative analyses
- Synthesize and craft a systematic reporting to support marketing decision making
Teaching methods
- Face-to-face lectures
- Exercises (exercises, database, software etc.)
- Case studies /Incidents (traditional, online)
- Group assignments
DETAILS
In addition to face-to-face lecturers, this course includes:
- Exercises: all marketing decisions will be taught using datasets and analytical models integrated in the online platform available to students;
- Case studies on real decision making problems will be discussed to appreciate the meaningfulness of the models and the analytical tools learned in the course;
- Case-group assignments: at the end of the course, students will gather in groups and engage in a real decision making problem, that they have to empirically solve and then present the solution to the class
Assessment methods
Continuous assessment | Partial exams | General exam | |
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ATTENDING STUDENTS
Individual exam on selected parts and group assignments.
NOT ATTENDING STUDENTS
Full individual exam
Teaching materials
ATTENDING STUDENTS
- Gary L. Lilien; Arvind Rangaswamy; Arnaud De Bruyn (2017) "Principles of Marketing Engineering and Analytics" 3rd Edition.
Topics of the syllabus discussed in class
NOT ATTENDING STUDENTS
- Gary L. Lilien; Arvind Rangaswamy; Arnaud De Bruyn (2017) "Principles of Marketing Engineering and Analytics" 3rd Edition .
All content of the syllabus