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doctoral thesis

Discrete choice modeling in the era of big data

Ortelli, Nicola Marco  
2024

The technological advancements of the past decades have allowed transforming an increasing part of our daily actions and decisions into storable data, leading to a radical change in the scale and scope of available data in relation to virtually any object of study. In the field of discrete choice analysis, such abundance of data has the potential to expand our understanding of human behavior, but this prospect is limited by the poor scalability of discrete choice models (DCMs). This thesis presents a series of innovative methodological developments for the specification and estimation of DCMs and other statistical models using large-scale datasets. Our main contributions consist in practical methods inspired from the success of machine learning in harnessing and exploiting ever-larger amounts of data. By making these methods publicly available, we offer valuable tools to researchers and practitioners across various domains.

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Type
doctoral thesis
DOI
10.5075/epfl-thesis-10456
Author(s)
Ortelli, Nicola Marco  
Advisors
Bierlaire, Michel  
•
Cochon de Lapparent, Matthieu Marie  
Jury

Prof. Gabriele Manoli (président) ; Prof. Michel Bierlaire, Prof. Matthieu Marie Cochon de Lapparent (directeurs) ; Prof. Alexandre Alahi, Prof. Elisabetta Cherchi, Prof. Moshe Ben-Akiva (rapporteurs)

Date Issued

2024

Publisher

EPFL

Publisher place

Lausanne

Public defense year

2024-05-31

Thesis number

10456

Total of pages

99

Subjects

discrete choice models

•

data-driven methods

•

maximum likelihood estimation

•

dataset reduction

•

model specification

•

accident severity

•

driving behavior

•

latent variable model.

EPFL units
TRANSP-OR  
Faculty
ENAC  
School
INTER  
Doctoral School
EDCE  
Available on Infoscience
June 4, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/208233
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