With the advent of deep learning supported by substantial technological advances, the Artificial Intelligence has taken a decisive step towards the automation of large dimension tasks. Reinforcement learning has been revolutionized thanks to new representation concepts introduced by deep learning. However, the extension of this paradigm application to the real world has triggered new challenges of generalization and optimization associated with higher level of tasks non-stationarity. In this thesis, we are interested in the recent methodological evolution of machine learning towards meta-learning in order to remedy the deep learning limits. The proposed approach is built on the basis of a Markovian formulation gradually evolving along 2 axe...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Dans ce mémoire, nous étudions la généralisation des réseaux de neurones dans le contexte du méta-ap...
Combinés à des réseaux de neurones profonds ("Deep Neural Networks"), certains algorithmes d'apprent...
With the advent of deep learning supported by substantial technological advances, the Artificial Int...
Avec l'avènement de l'apprentissage profond, l'intelligence artificielle a franchi un pas décisif ve...
In this thesis, we address the challenges of autonomous driving in an urban environment using end-to...
Humans have a remarkable ability to learn new concepts from only a few examples and quickly adapt to...
Dans cette thèse, nous abordons les défis de la conduite autonome en environnement urbain en utilisa...
This thesis addresses the dilemma between exploration and exploitation as it is faced by reinforceme...
Many real-world domains are subject to a structured non-stationarity which affects the agent's goals...
As soon as the robots step out in the real and uncertain world, they have to adapt to various unanti...
Human-centered artificial intelligence (AI) envisions a future where AI systems augment and cooperat...
In real-world robotic applications, many factors, both at low-level (e.g., vision and motion control...
Reinforcement learning describes how an agent can learn to act in an unknown environment in order to...
Modern deep reinforcement learning (RL) algorithms, despite being at the forefront of artificial int...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Dans ce mémoire, nous étudions la généralisation des réseaux de neurones dans le contexte du méta-ap...
Combinés à des réseaux de neurones profonds ("Deep Neural Networks"), certains algorithmes d'apprent...
With the advent of deep learning supported by substantial technological advances, the Artificial Int...
Avec l'avènement de l'apprentissage profond, l'intelligence artificielle a franchi un pas décisif ve...
In this thesis, we address the challenges of autonomous driving in an urban environment using end-to...
Humans have a remarkable ability to learn new concepts from only a few examples and quickly adapt to...
Dans cette thèse, nous abordons les défis de la conduite autonome en environnement urbain en utilisa...
This thesis addresses the dilemma between exploration and exploitation as it is faced by reinforceme...
Many real-world domains are subject to a structured non-stationarity which affects the agent's goals...
As soon as the robots step out in the real and uncertain world, they have to adapt to various unanti...
Human-centered artificial intelligence (AI) envisions a future where AI systems augment and cooperat...
In real-world robotic applications, many factors, both at low-level (e.g., vision and motion control...
Reinforcement learning describes how an agent can learn to act in an unknown environment in order to...
Modern deep reinforcement learning (RL) algorithms, despite being at the forefront of artificial int...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Dans ce mémoire, nous étudions la généralisation des réseaux de neurones dans le contexte du méta-ap...
Combinés à des réseaux de neurones profonds ("Deep Neural Networks"), certains algorithmes d'apprent...