Length: 16 hours - 3 cfu
Abstract
Multi-output learning is grounded on simultaneously predict multiple outputs given an input. Its modelling algorithms are very important to support decision-making, since making decisions in the real world often involves multiple complex factors and criteria. Beyond classification and regression solutions, Multi-Output research area deals with all steps of a Data Mining pipeline, e.g. selecting features with a multiple output constraint.
Target: To introduce students to classic and state-of-the-art algorithms of Multi-Output based on applications and real-life case studies, as well as general questions related to analyzing and handling datasets with several outputs.
Method: The course is split between theoretical foundations and practical exercises:
- Introduction to Multi-Output Learning
- Multi-label problems (Classification Scenario)
- Multi-target problems (Regression Scenario)
- Mining multi-output scenarios
The practical exercises ask students to write original programs, as well as modify pre-coded examples in R or Python. Each meeting provides 4 hours of a subject.
Exame: The student needs to deliver a Multi-Output project (prototype level) with preliminary discussion and insights.
Dates & Venue
Giorni | Aula | Orario |
19/01/2021 | videoconference | 14:00-18:00 |
21/01/2021 | videoconference | 14:00-18:00 |
26/01/2021 | videoconference | 14:00-18:00 |
28/01/2021 | videoconference | 14:00-18:00 |