The State of the Art of the young domain of Meta-Learning [3] is held by the connectionist approach. Several techniques of such an inspiration have recently shown promising results in automatically designing neural network architectures [1]. However, apart from back-propagation, only a few applications of other learning techniques are used for these purposes. The back-propagation process takes advantage of specific optimization techniques that are best suited to some fields of applications (e.g., Computer Vision and Natural Language Processing). Hence the need for a more general learning approach, namely, a basic algorithm able to make inference in different contexts with different properties. In our research work, we deal with the problem...
Meta-parameters in reinforcement learning should be tuned to the environmental dynamics and the anim...
Intelligent agents should have the ability to leverage knowledge from previously learned tasks in or...
The common practices of machine learning appear to be frustrated by a number of theoretical results ...
The State of the Art of the young domain of Meta-Learning [3] is held by the connectionist approach....
The State of the Art of the young field of Automated Machine Learning (AutoML) is held by the connec...
The field of artificial intelligence has been throughout its history repeatedly inspired by human co...
In this chapter an analysis of computational mechanisms of induction is brought forward, in order to...
Meta-learning, or learning to learn, is an emerging field within artificial intelligence (AI) that e...
A natural progression in machine learning research is to automate and learn from data increasingly m...
Meta-learning, or learning to learn, is the science of systematically observing how different machin...
Modern deep reinforcement learning (RL) algorithms, despite being at the forefront of artificial int...
Humans have a remarkable ability to learn new concepts from only a few examples and quickly adapt to...
Meta-learning algorithms leverage regularities that are present on a set of tasks to speed up and im...
Artificial Neural Networks design and training algorithms are based many times on the optimization o...
© 2019, Springer Nature Switzerland AG. In the last few years, we have witnessed a resurgence of int...
Meta-parameters in reinforcement learning should be tuned to the environmental dynamics and the anim...
Intelligent agents should have the ability to leverage knowledge from previously learned tasks in or...
The common practices of machine learning appear to be frustrated by a number of theoretical results ...
The State of the Art of the young domain of Meta-Learning [3] is held by the connectionist approach....
The State of the Art of the young field of Automated Machine Learning (AutoML) is held by the connec...
The field of artificial intelligence has been throughout its history repeatedly inspired by human co...
In this chapter an analysis of computational mechanisms of induction is brought forward, in order to...
Meta-learning, or learning to learn, is an emerging field within artificial intelligence (AI) that e...
A natural progression in machine learning research is to automate and learn from data increasingly m...
Meta-learning, or learning to learn, is the science of systematically observing how different machin...
Modern deep reinforcement learning (RL) algorithms, despite being at the forefront of artificial int...
Humans have a remarkable ability to learn new concepts from only a few examples and quickly adapt to...
Meta-learning algorithms leverage regularities that are present on a set of tasks to speed up and im...
Artificial Neural Networks design and training algorithms are based many times on the optimization o...
© 2019, Springer Nature Switzerland AG. In the last few years, we have witnessed a resurgence of int...
Meta-parameters in reinforcement learning should be tuned to the environmental dynamics and the anim...
Intelligent agents should have the ability to leverage knowledge from previously learned tasks in or...
The common practices of machine learning appear to be frustrated by a number of theoretical results ...