DIGITAL MARKETING AND CUSTOMER ANALYTICS
- Anno accademico
- 2023/2024 Programmi anni precedenti
- Titolo corso in inglese
- DIGITAL MARKETING AND CUSTOMER ANALYTICS
- Codice insegnamento
- EM1412 (AF:382720 AR:208964)
- Lingua di insegnamento
- Inglese
- Modalità
- In presenza
- Crediti formativi universitari
- 6
- Livello laurea
- Laurea magistrale (DM270)
- Settore scientifico disciplinare
- SECS-P/08
- Periodo
- 1° Periodo
- Anno corso
- 2
- Sede
- VENEZIA
- Spazio Moodle
- Link allo spazio del corso
Inquadramento dell'insegnamento nel percorso del corso di studio
Risultati di apprendimento attesi
- the impact of digital technologies on marketing;
- the challenges of digital marketing;
- the choice between of prediction and causality;
- the choice between supervised and unsupervised learning algorithms;
- the application of data analytics to marketing intelligence: marketing campaigning, advanced profiling, anti-churn
Prerequisiti
Contenuti
- digital technologies in marketing;
- CRM and consumer behaviour;
- marketing analytics;
- predictive modeling vs. causal modeling;
- supervised vs unsupervised machine learning;
- customer segmentation, marketing campaigning, attrition.
Testi di riferimento
2. DeMartino, G.F., 2021. The specter of irreparable ignorance: counterfactuals and causality in economics. Review of Evolutionary Political Economy, pp.1-24.
3. Fabrizi A. & Banoub T. 2012 HP SPS Next Best Offer: how to re-think your marketing, HP Technical White Paper
4. Kitchin, R. "Big Data, new epistemologies and paradigm shifts." Big data & society 1, no. 1 (2014)
5. Majnik, M. and Bosnić, Z., 2013. ROC analysis of classifiers in machine learning: A survey. Intelligent data analysis, 17(3), pp.531-558.
6. Nuccio, M., and Guerzoni M. "Big data: Hell or heaven? Digital platforms and market power in the data-driven economy." Competition & Change 23, no. 3 (2019): 312-328.
7. Pearl, J., 2018. Theoretical impediments to machine learning with seven sparks from the causal revolution. arXiv preprint arXiv:1801.04016.
8. Verbraken, T., Wouter V., and Bart Baesens. "A novel profit maximizing metric for measuring classification performance of customer churn prediction models." IEEE transactions on knowledge and data engineering 25, no. 5 (2012): 961-973.
9. Wang, W., Feng, Y. and Dai, W., 2018. Topic analysis of online reviews for two competitive products using latent Dirichlet allocation. Electronic Commerce Research and Applications, 29, pp.142-156.
10. Wedel, M., & Kannan, P. K. (2016). Marketing analytics for data-rich environments. Journal of Marketing, 80(6), 97-121.
Modalità di verifica dell'apprendimento
- a group assignment (60%) to be submitted by the first exam date
- a class presentation (20%) based on two exercises on real data
- a written exam (20%) where one can choose one question out of three (theory)
Non-attending students will be evaluated on a written exam based on 3 questions and one exercise on RStudio.
Modalità di esame
Metodi didattici
Altre informazioni
https://opendataplayground.com/challenge/let-s-work-on-a-rating-score-ca-foscari