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Título
Statistical distances for model validation and clustering. Applications to flow cytometry and fair learning.
Autor
Director o Tutor
Año del Documento
2020
Titulación
Doctorado en Matemáticas
Resumen
This thesis has been developed at the University of Valladolid and IMUVA within the
framework of the project Sampling, trimming, and probabilistic metric techniques. Statis-
tical applications whose main researchers are Carlos Matr an Bea and Eustasio del Barrio
Tellado. Among the lines of research associated with the project are: model validation,
Wasserstein distances and robust cluster analysis. It is precisely the work carried out in
these elds that gives rise to chapters 1,2 and 4 of this report.
The work done in the eld of fair learning with Professor Jean-Michel Loubes, frequent
collaborator with Valladolid's team, during the international stay at the Paul Sabatier
University of Toulouse, is the basis of Chapter 3 of this report.
Therefore, this thesis is an exposition of the problems and results obtained in the
di erent elds previously mentioned. Due to the diversity of topics, we have decided to
base chapters on the works published or submitted to the present date, and therefore
each chapter has a structure relatively independent of the others. In this way Chapter 1
is based on the works [del Barrio et al., 2019e,del Barrio et al., 2019d], Chapter 2 is based
on the work [del Barrio et al., 2019c], Chapter 3 on the work [del Barrio et al., 2019b]
and Chapter 4 shows results of a work in progress.
In this introduction our objective is to present the main challenges we have faced, as
well as to brie
y present our most relevant results. On the other hand, each chapter will
have its own introduction where we will delve into the topics discussed below. With this
in mind, our intention is that the reader will have a general idea of what he or she will
nd in each chapter and in this way will have the necessary information to face the more
technical discussions that will be found there.
Due to the diversity of topics dealt with in this report, we propose a non-linear reading.
We suggest that the reader, after reading a section of the Introduction, moves to the
corresponding chapter. In this way the reader will have the relevant information more
at hand and will be able to follow better the exposition in each chapter. If on the other
hand there is a sequential reading of the document, we apologize in advance for some
repetitions and reiterations, which nevertheless seem to us to contribute positively to the
understanding of this work.
Materias (normalizadas)
Estadística matemática
Número de clusters
Materias Unesco
12 Matemáticas
Departamento
Departamento de Estadística e Investigación Operativa
Idioma
eng
Tipo de versión
info:eu-repo/semantics/publishedVersion
Derechos
openAccess
Aparece en las colecciones
- Tesis doctorales UVa [2321]
Ficheros en el ítem
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