When deploying machine learning solutions, they must satisfy multiple requirements beyond accuracy, such as fairness, robustness, or safety. These requirements are imposed during training either implicitly, using penalties, or explicitly, using constrained optimization methods based on Lagrangian duality. Either way, specifying requirements is hindered by the presence of compromises and limited prior knowledge about the data. Furthermore, their impact on performance can often only be evaluated by actually solving the learning problem. This paper presents a constrained learning approach that adapts the requirements while simultaneously solving the learning task. To do so, it relaxes the learning constraints in a way that contemplates how muc...
The classical framework of learning from examples is enhanced by the introduction of hard pointwise ...
This paper studies how to train machine-learning models that directly approximate the optimal soluti...
Modern learning problems in nature language processing, computer vision, computational biology, etc....
Adding constraint support in Machine Learning has the potential to address outstanding issues in dat...
Methods for taking into account external knowledge in Machine Learning models have the potential to ...
Many everyday human skills can be framed in terms of performing some task subject to constraints im...
Methods for taking into account external knowledge in Machine Learning models have the potential to ...
Machine Learning: A Constraint-Based Approach provides readers with a refreshing look at the basic m...
Machine Learning: A Constraint-Based Approach, Second Edition provides readers with a refreshing loo...
This dissertation is about learning representations of functions while restricting complexity. In ma...
One of the main goal of Artificial Intelligence is to develop models capable of providing valuable p...
Despite their impressive performance on large-scale benchmarks, machine learning sys- tems turn out ...
We address the issue of safety in reinforcement learning. We pose the problem in an episodic framewo...
Visual model-based RL methods typically encode image observations into low-dimensional representatio...
The complexity of learning problems, such as Generative Adversarial Network (GAN) and its variants, ...
The classical framework of learning from examples is enhanced by the introduction of hard pointwise ...
This paper studies how to train machine-learning models that directly approximate the optimal soluti...
Modern learning problems in nature language processing, computer vision, computational biology, etc....
Adding constraint support in Machine Learning has the potential to address outstanding issues in dat...
Methods for taking into account external knowledge in Machine Learning models have the potential to ...
Many everyday human skills can be framed in terms of performing some task subject to constraints im...
Methods for taking into account external knowledge in Machine Learning models have the potential to ...
Machine Learning: A Constraint-Based Approach provides readers with a refreshing look at the basic m...
Machine Learning: A Constraint-Based Approach, Second Edition provides readers with a refreshing loo...
This dissertation is about learning representations of functions while restricting complexity. In ma...
One of the main goal of Artificial Intelligence is to develop models capable of providing valuable p...
Despite their impressive performance on large-scale benchmarks, machine learning sys- tems turn out ...
We address the issue of safety in reinforcement learning. We pose the problem in an episodic framewo...
Visual model-based RL methods typically encode image observations into low-dimensional representatio...
The complexity of learning problems, such as Generative Adversarial Network (GAN) and its variants, ...
The classical framework of learning from examples is enhanced by the introduction of hard pointwise ...
This paper studies how to train machine-learning models that directly approximate the optimal soluti...
Modern learning problems in nature language processing, computer vision, computational biology, etc....