MACHINE LEARNING AND ANALYTICS
- Anno accademico
- 2024/2025 Programmi anni precedenti
- Titolo corso in inglese
- MACHINE LEARNING AND ANALYTICS
- Codice insegnamento
- PHD190 (AF:494544 AR:274429)
- Modalità
- Crediti formativi universitari
- 6
- Livello laurea
- Corso di Dottorato (D.M.45)
- Settore scientifico disciplinare
- SECS-P/08
- Periodo
- 2° 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
- Identify business problems and design a strategy to approach them
- Demonstrate the ability to discern and implement appropriate machine learning algorithms tailored to real-world applications
- Cultivate critical thinking skills in evaluating quantitative approaches and models, exhibiting a deep comprehension of the nuances and obstacles inherent in machine learning and data-driven analytics. Students will be encouraged to assess advantages and drawbacks of different methodologies presented during lectures.
- Enhance communication proficiency by grasping key terminology and concepts, enabling them to present ideas, findings, proposals, analyses, and critical reasoning effectively within the domain of business analytics. Emphasis will be placed on honing oral presentation and pitching skills during group projects, as well as on crafting empirical papers.
Prerequisiti
Contenuti
-what is machine learning and why it is relevant for business and management studies
- example of application of ML in business and management studies
- differences between causal modeling in econometrics and predictive modeling in ML
- review of the most popular algorithm in supervised and unsupervised learning
- introduction to the use of Natural Language Processing in business studies
Testi di riferimento
Slides and further materials are available on Moodle