A longstanding goal in reinforcement learning is to build intelligent agents that show fast learning and a flexible transfer of skills akin to humans and animals. This paper investigates the integration of two frameworks for tackling those goals: episodic control and successor features. Episodic control is a cognitively inspired approach relying on episodic memory, an instance-based memory model of an agent's experiences. Meanwhile, successor features and generalized policy improvement (SF&GPI) is a meta and transfer learning framework allowing to learn policies for tasks that can be efficiently reused for later tasks which have a different reward function. Individually, these two techniques have shown impressive results in vastly improving...
Deep Reinforcement Learning (RL) involves the use of Deep Neural Networks (DNNs) to make sequential ...
A key objective of transfer learning is to improve and speedup learning on a target task after train...
Deep learning has revolutionised artificial intelligence, where the application of increased compute...
International audienceA longstanding goal in reinforcement learning is to build intelligent agents t...
Episodic control enables sample efficiency in reinforcement learning by recalling past experiences f...
For decades, neuroscientists and psychologists have observed that animal performance on spatial navi...
Recently, neuro-inspired episodic control (EC) methods have been developed to overcome the data-inef...
Recent advancements in reinforcement learning confirm that reinforcement learning techniques can sol...
Treball fi de màster de: Master in Cognitive Systems and Interactive MediaDirectors: Ismael T. Freir...
Transfer in Reinforcement Learning aims to improve learning performance on target tasks using knowle...
Elements from cognitive psychology have been applied in a variety of ways to artificial intelligence...
International audienceAugmenting the representation of the current state of the external world with ...
Transfer in reinforcement learning refers to the notion that generalization should occur not only wi...
Memory lies at the heart of human cognitive abilities. Therefore, understanding it from neural, psyc...
While reinforcement learning (RL) provides a framework for learning through trial and error, transla...
Deep Reinforcement Learning (RL) involves the use of Deep Neural Networks (DNNs) to make sequential ...
A key objective of transfer learning is to improve and speedup learning on a target task after train...
Deep learning has revolutionised artificial intelligence, where the application of increased compute...
International audienceA longstanding goal in reinforcement learning is to build intelligent agents t...
Episodic control enables sample efficiency in reinforcement learning by recalling past experiences f...
For decades, neuroscientists and psychologists have observed that animal performance on spatial navi...
Recently, neuro-inspired episodic control (EC) methods have been developed to overcome the data-inef...
Recent advancements in reinforcement learning confirm that reinforcement learning techniques can sol...
Treball fi de màster de: Master in Cognitive Systems and Interactive MediaDirectors: Ismael T. Freir...
Transfer in Reinforcement Learning aims to improve learning performance on target tasks using knowle...
Elements from cognitive psychology have been applied in a variety of ways to artificial intelligence...
International audienceAugmenting the representation of the current state of the external world with ...
Transfer in reinforcement learning refers to the notion that generalization should occur not only wi...
Memory lies at the heart of human cognitive abilities. Therefore, understanding it from neural, psyc...
While reinforcement learning (RL) provides a framework for learning through trial and error, transla...
Deep Reinforcement Learning (RL) involves the use of Deep Neural Networks (DNNs) to make sequential ...
A key objective of transfer learning is to improve and speedup learning on a target task after train...
Deep learning has revolutionised artificial intelligence, where the application of increased compute...