PhD defence: Marcela Galvis Restrepo
The thesis consists of four papers dealing with the design or application of supervised classification with mixed data. Using generalized linear models, the first two papers suggest methodologies to reduce the number of coefficients associated with categorical predictors and their interactions. In the third paper, predictive modeling is applied to the problem of school dropout in Colombia, and strategies are suggested for targeting at-risk students. Using feature shrinkage, the fourth paper proposes a method to enhance the trade-off between accuracy and unfairness in supervised learning.
Ìý
Primary Supervisor:
Professor Dolores Romero Morales
Department of Economics
Copenhagen Business School
Ìý
Secondary Supervisors:
Professor Emilio Carrizosa
Instituto de Matemáticas
Universidad de Sevilla
Ìý
Associate Professor Fane Groes
Department of Economics
Copenhagen Business School
Ìý
Assessment Committee:
Associate Professor Moira Daly (Chair)
Department of Economics
Copenhagen Business School
Ìý
Associate Professor Jochen De Weerdt
Faculty of Economics and Business
Katholieke Universiteit Leuven
Ìý
Full Professor Sebastian Maldonado
Universidad de Chile
Ìý
Thesis:
The thesis will be available from
Ìý
Reception:
The casino 168 PhD School will host a reception, which will take place immediately after the defence in ECONS Kitchen at ±Ê´Ç°ù³¦±ð±ôæ²Ô²õ³ó²¹±¹±ð²Ô (3th. Floor).
Organised by |
casino 168 PhD School |
Date |
11/17/2022 |
Time |
15:00-17:00 |
Location |
Copenhagen Business School Ìý It will also be possible to attend the defence via Microsoft Teams at the following link: Ìý *Please note in connection with the online defence that the microphone and camera of all spectators must be turned off! |
Ìý