In this thesis, I make some contributions to the development of representation learning in the setting of external constraints and noisy supervision. A setting of external constraints refers to the scenario in which the learner is forced to output a latent representation of the given data points while enforcing some particular conditions. These conditions can be geometrical constraints, for example forcing the vector embeddings to be close to each other based on a particular relations, or forcing the embedding vectors to lie in a particular manifold, such as the manifold of vectors whose elements sum to 1, or even more complex constraints. The objects of interest in this thesis are elements of a collection X in an abstract space that is end...
In supervised deep learning, learning good representations for remote--sensing images (RSI) relies o...
dissertationThe goal of machine learning is to develop efficient algorithms that use training data t...
This thesis presents new methods for unsupervised learning of distributed representations of words a...
In this thesis, I make some contributions to the development of representation learning in the setti...
Vector embedding models are a cornerstone of modern machine learning methods for knowledge represent...
In many application fields, ranging from bioinformatics to computer vision, prior knowledge on pairw...
We focus on the problem of learning representations from data in the situation where we do not have ...
Learning to embed data into a low dimensional vector space that is more useful for some downstream t...
This dissertation is about learning representations of functions while restricting complexity. In ma...
The world is structured in countless ways. It may be prudent to enforce corresponding structural pro...
The success of machine learning algorithms generally depends on data representation, and we hypothes...
Efficient representations of observed input data have been shown to significantly accelerate the per...
In Machine Learning the main problem is that of learning a ‘description’ of a class (possibly an inf...
In many real-world applications of supervised learning, only a limited number of labeled examples ar...
This dissertation is about learning representations of functions while restricting complexity. In ma...
In supervised deep learning, learning good representations for remote--sensing images (RSI) relies o...
dissertationThe goal of machine learning is to develop efficient algorithms that use training data t...
This thesis presents new methods for unsupervised learning of distributed representations of words a...
In this thesis, I make some contributions to the development of representation learning in the setti...
Vector embedding models are a cornerstone of modern machine learning methods for knowledge represent...
In many application fields, ranging from bioinformatics to computer vision, prior knowledge on pairw...
We focus on the problem of learning representations from data in the situation where we do not have ...
Learning to embed data into a low dimensional vector space that is more useful for some downstream t...
This dissertation is about learning representations of functions while restricting complexity. In ma...
The world is structured in countless ways. It may be prudent to enforce corresponding structural pro...
The success of machine learning algorithms generally depends on data representation, and we hypothes...
Efficient representations of observed input data have been shown to significantly accelerate the per...
In Machine Learning the main problem is that of learning a ‘description’ of a class (possibly an inf...
In many real-world applications of supervised learning, only a limited number of labeled examples ar...
This dissertation is about learning representations of functions while restricting complexity. In ma...
In supervised deep learning, learning good representations for remote--sensing images (RSI) relies o...
dissertationThe goal of machine learning is to develop efficient algorithms that use training data t...
This thesis presents new methods for unsupervised learning of distributed representations of words a...