FORMATIONS |
Fiche détaillée d'un cours
CONSUMER INTELLIGENCE: HOW TO MAKE USE OF CUSTOMER DATA | |||
2018-2019 | FrIESEG School of Management
(
IÉSEG
)
| ||
Code Cours : | 1819-IÉSEG-M1S2-MKT-MA-EI64UE | MARKETING |
Niveau | Année de formation | Période | Langue d'enseignement |
---|---|---|---|
Master | 1 | S2 | FrEnglish |
Professeur(s) responsable(s) | K.COUSSEMENT |
---|---|
Intervenant(s) | Kristof COUSSEMENT |
- Ce cours apparaît dans les formations suivantes :
- IÉSEG > IESEG Degree - Programme Grande École > Semester 2 > 2,00 ECTS
Pré requis
Students must have basic competencies in marketing
Objectifs du cours
At the end of the course, the student should be able to:
- the student should be able to spot opportunities to transform customer data into actionable results.
- the student should be able to use customer data him- or herself to improve the customer relationships.
Contenu du cours
Nowadays, there is a tremendous increase in customer information which is available for the marketer. Indeed, companies are collecting different types of information from their customers like social media information, purchasing behaviour, complaining behaviour, socio-demographic information,... Consequently, knowing how to use this new information to improve customer relationships could be of high benefit for every marketer because better decisions could based upon that. This course tries to fulfil the gap by reaching students new ways to interact with customers on a one-to-one basis.
1. Introduction to Customer Intelligence
2. Understanding basic concepts and recognizing possible business applications
3. Explaining the predictive modelling approach: Sample, Explore, Modify, Model and Assess
4. Acknowledgment of the importance of data pre-processing
5. Introduction to the most popular predictive modelling applications
6. Understanding of the most popular evaluation metrics
Modalités d'enseignement
Organisation du cours
Type | Nombre d'heures | Remarques | |
---|---|---|---|
Independent study | |||
Group Project | 16,00 | ||
Face to face | |||
lecture | 16,00 | ||
Independent work | |||
Research | 18,00 | ||
Charge de travail globale de l'étudiant | 50,00 |
Méthodes pédagogiques
- Exercises
- Interactive class
- Presentation
- Project work
- Research
- Seminar
Évaluation
Details will be given in the first lecture.
Type de Contrôle | Durée | Nombre | Pondération |
---|---|---|---|
presentation | |||
statement | 0,00 | 1 | 20,00 |
Others | |||
Written Report | 5,00 | 1 | 20,00 |
Individual Project | 10,00 | 1 | 40,00 |
Continuous assessment | |||
Participation | 16,00 | 1 | 20,00 |
TOTAL | 100,00 |
Bibliographie
- Coussement K., Customer Intelligence: SAS Enterprise Miner Reference Manual version 0.3 (2011). -
- Robert C. Blattberg, Byung-Do Kim, Scott A. Neslin. Database Marketing: Analyzing and Managing Customers. Springer (2008). -
Ressources internet
- IESEG Online
Complementary material posted on IESEG Online.
* Informations non contractuelles et pouvant être soumises à modification