In the golden era of information, vast amounts of data are available to perform analysis on and extract valuable insight from. The area of science devoted to this problem is known as Knowledge Discovery in Databases; particularly, it is its branch of Data Science where this thesis is framed in. Specifically, this thesis focuses on clustering techniques that are capable of including relational information into the clustering process. This type of information does not fit into the classic supervised and unsupervised learning paradigms. However, the Semi- Supervised Learning (SSL) paradigm does provide us with the tools to perform clustering in the presence of relational information. This task is known as Constrained Clustering (CC). F...
El Raonament Basat en Casos (CBR) és un paradigma d'aprenentatge basat en establir analogies amb pro...
Selection of appropriate input features in the increase of the efficiency of data mining algorithms ...
Big Data is a concept related to extremely large databases so that they cannot be processed with st...
Machine learning techniques are used for extracting valuable knowledge from data. Nowa¬days, these t...
Machine learning techniques are used for extracting valuable knowledge from data. Nowa¬days, these t...
[EN] El análisis de clusters tiene por objetivo dividir objetos de datos en grupos, de tal manera q...
This thesis is concerned with the three open in multi-objective optimization: (i) the development of...
This thesis is concerned with the three open in multi-objective optimization: (i) the development of...
In pursuing the central theme of this Ph.D. thesis, which is effective web search, the author seeks...
Clustering analysis is widely used to stratify data in the same cluster when they are similar accord...
Orientadora: Aurora Trinidad Ramirez PozoCoorientador: Marcilio Carlos Pereira de SoutoDissertação (...
This PhD dissertation bridges the disciplines of Operations Research and Statistics to develop nove...
The objectives of this thesis are focused on research in machine learning for coreference resolutio...
In this thesis, we exploit the hierarchical information associated with images to tackle two fundame...
Tesis inédita leída en la Universidad Autónoma de Madrid, Escuela Politécnica Superior, Departament...
El Raonament Basat en Casos (CBR) és un paradigma d'aprenentatge basat en establir analogies amb pro...
Selection of appropriate input features in the increase of the efficiency of data mining algorithms ...
Big Data is a concept related to extremely large databases so that they cannot be processed with st...
Machine learning techniques are used for extracting valuable knowledge from data. Nowa¬days, these t...
Machine learning techniques are used for extracting valuable knowledge from data. Nowa¬days, these t...
[EN] El análisis de clusters tiene por objetivo dividir objetos de datos en grupos, de tal manera q...
This thesis is concerned with the three open in multi-objective optimization: (i) the development of...
This thesis is concerned with the three open in multi-objective optimization: (i) the development of...
In pursuing the central theme of this Ph.D. thesis, which is effective web search, the author seeks...
Clustering analysis is widely used to stratify data in the same cluster when they are similar accord...
Orientadora: Aurora Trinidad Ramirez PozoCoorientador: Marcilio Carlos Pereira de SoutoDissertação (...
This PhD dissertation bridges the disciplines of Operations Research and Statistics to develop nove...
The objectives of this thesis are focused on research in machine learning for coreference resolutio...
In this thesis, we exploit the hierarchical information associated with images to tackle two fundame...
Tesis inédita leída en la Universidad Autónoma de Madrid, Escuela Politécnica Superior, Departament...
El Raonament Basat en Casos (CBR) és un paradigma d'aprenentatge basat en establir analogies amb pro...
Selection of appropriate input features in the increase of the efficiency of data mining algorithms ...
Big Data is a concept related to extremely large databases so that they cannot be processed with st...