363-1043-00L Marketing Analytics
Semester | Frühjahrssemester 2020 |
Dozierende | S. Tillmanns |
Periodizität | jährlich wiederkehrende Veranstaltung |
Lehrsprache | Englisch |
Lehrveranstaltungen
Nummer | Titel | Umfang | Dozierende | |||||||
---|---|---|---|---|---|---|---|---|---|---|
363-1043-00 S | Marketing Analytics Irregular lecture: 19.02.2020 13:00-17:00 WEV F 109-111 04.03.2020 13:00-17:00 WEV F 109-111 11.03.2020 13:00-16:00 tba 18.03.2020 13:00-14:30 tba 01.04.2020 13:00-14:30 tba 22.04.2020 13:00-14:30 tba 06.05.2020 13:00-14:30 tba 13.05.2020 13:00-14:30 tba 20.05.2020 13:00-14:30 tba 27.05.2020 13:00-17:00 tba | 24s Std. |
| S. Tillmanns |
Katalogdaten
Kurzbeschreibung | Students will use extensive customer data from an insurance company in order to develop prediction models for e.g. customer revenue and churn in a prediction challenge. They will work in groups and give a final presentation. The class will be held by Andrea Ferrario (Mobiliar Lab for Analytics/Chair of Technology Marketing) and Sebastian Tillmanns (Chair of Technology Marketing). |
Lernziel | - Participants of this class will gain an understanding, how value can be generated out of customer data. - Participants will learn how to prepare real customer data. - Participants will be able to develop prediction models autonomously. |
Inhalt | Students of this class will gain an understanding how to extract value from customer data autonomously by participating in a prediction competition. Therefore, they receive real customer data from an insurance company. Students are free to prepare the provided data and develop prediction models in the way they consider the best. Their freedom of choice covers all statistical methods, software packages and data that are available to them. At the end of the class, their predictions will be compared with the real development of the customers in the provided sample. Furthermore, students will give final presentations at the end of the class, which will be joined by representatives of the insurance company. Students will have to write a short paper, in which they describe how they proceeded. We expect that students test different prediction models against each other to justify their proceeding. At the beginning of the class, students will be able to visit several lectures, which will help to work on the given prediction task. These lectures involve fundamentals of marketing analytics and data analytics with common software packages. Throughout the lecture, several time slots are provided, where students can discuss their prediction models with the lecturers Andrea Ferrario (Mobiliar Lab for Analytics/Chair of Technology Marketing) and Sebastian Tillmanns (Chair of Technology Marketing). The data handling and prediction skills students achieve in this class are not limited to marketing applications, but can be easily extended to other fields where predications of continuous or binary metrics are useful. |
Leistungskontrolle
Information zur Leistungskontrolle (gültig bis die Lerneinheit neu gelesen wird) | |
Leistungskontrolle als Semesterkurs | |
ECTS Kreditpunkte | 3 KP |
Prüfende | S. Tillmanns |
Form | benotete Semesterleistung |
Prüfungssprache | Englisch |
Repetition | Repetition nur nach erneuter Belegung der Lerneinheit möglich. |
Zusatzinformation zum Prüfungsmodus | Students have to form groups and turn in prediction models and a paper about these models. |
Lernmaterialien
Keine öffentlichen Lernmaterialien verfügbar. | |
Es werden nur die öffentlichen Lernmaterialien aufgeführt. |
Gruppen
Keine Informationen zu Gruppen vorhanden. |
Einschränkungen
Keine zusätzlichen Belegungseinschränkungen vorhanden. |
Angeboten in
Studiengang | Bereich | Typ | |
---|---|---|---|
Management, Technologie und Ökonomie Master | Wahlfächer | W |