Machine learning algorithms and systems are progressively becoming part of our societies, leading to a growing need of building a vast multitude of accurate, reliable and interpretable models which should possibly exploit similarities among tasks. Automating segments of machine learning itself seems to be a natural step to undertake to deliver increasingly capable systems able to perform well in both the big-data and the few-shot learning regimes. Hyperparameter optimization (HPO) and meta-learning (MTL) constitute two building blocks of this growing effort. We explore these two topics under a unifying perspective, presenting a mathematical framework linked to bilevel programming that captures existing similarities and translates into proce...
Most machine learning algorithms are configured by a set of hyperparameters whose values must be car...
Machine learning algorithms have been used widely in various applications and areas. To fit a machin...
Deep neural networks can achieve great successes when presented with large data sets and sufficient ...
We introduce a framework based on bilevel programming that unifies gradient-based hyperparameter opt...
Automatic differentiation (AD) is a core element of most modern machine learning libraries that all...
In the recent years, there have been significant developments in the field of machine learning, with...
Abstract. The success of machine learning on a given task depends on, among other things, which lear...
Hyperparameter optimization (HPO) is a necessary step to ensure the best possible performance of Mac...
Recent developments in few-shot learning have shown that during fast adaption, gradient-based meta-l...
In the last years, organizations and companies in general have found the true potential value of col...
Automatic learning research focuses on the development of methods capable of extracting useful infor...
Bilevel Optimization Programming is used to model complex and conflicting interactions between agent...
Abstract. Model selection and hyperparameter optimization is cru-cial in applying machine learning t...
This project focuses on the concept of hyperparameters in a Machine Learning classifi- cation proble...
Since reinforcement learning algorithms have to fully solve a task in order to evaluate a set of hyp...
Most machine learning algorithms are configured by a set of hyperparameters whose values must be car...
Machine learning algorithms have been used widely in various applications and areas. To fit a machin...
Deep neural networks can achieve great successes when presented with large data sets and sufficient ...
We introduce a framework based on bilevel programming that unifies gradient-based hyperparameter opt...
Automatic differentiation (AD) is a core element of most modern machine learning libraries that all...
In the recent years, there have been significant developments in the field of machine learning, with...
Abstract. The success of machine learning on a given task depends on, among other things, which lear...
Hyperparameter optimization (HPO) is a necessary step to ensure the best possible performance of Mac...
Recent developments in few-shot learning have shown that during fast adaption, gradient-based meta-l...
In the last years, organizations and companies in general have found the true potential value of col...
Automatic learning research focuses on the development of methods capable of extracting useful infor...
Bilevel Optimization Programming is used to model complex and conflicting interactions between agent...
Abstract. Model selection and hyperparameter optimization is cru-cial in applying machine learning t...
This project focuses on the concept of hyperparameters in a Machine Learning classifi- cation proble...
Since reinforcement learning algorithms have to fully solve a task in order to evaluate a set of hyp...
Most machine learning algorithms are configured by a set of hyperparameters whose values must be car...
Machine learning algorithms have been used widely in various applications and areas. To fit a machin...
Deep neural networks can achieve great successes when presented with large data sets and sufficient ...