Cooperation is a widespread phenomenon in nature that has also been a cornerstone in the development of human intelligence. Understanding cooperation, therefore, on matters such as how it emerges, develops, or fails is an important avenue of research, not only in a human context, but also for the advancement of next generation artificial intelligence paradigms which are presumably human-compatible. With this motivation in mind, we study the emergence of cooperative behaviour between two independent deep reinforcement learning (RL) agents provided with human input in a novel game environment. In particular, we investigate whether evaluative human feedback (through interactive RL) and expert demonstration (through inverse RL) can help RL agen...
A longstanding problem in the area of reinforcement learning is human-agent col- laboration. As past...
Interaction of humans and AI systems is becoming ubiquitous. Specifically, recent advances in machin...
The TAMER framework, which provides a way for agents to learn to solve tasks using human-generated r...
Cooperation is a widespread phenomenon in nature that has also been a cornerstone in the development...
For years, researchers have demonstrated the viability and applicability of game theory principles t...
Learning from rewards generated by a human trainer observing an agent in action has proven to be a p...
Mutual learning is an emerging field in intelligent systems which takes inspiration from naturally i...
The intuitive collaboration of humans and intel-ligent robots (embodied AI) in the real-world is an ...
In this paper, we introduce a new approach to Reinforcement Learning (RL) called “supervised attenti...
Learning from rewards generated by a human trainer observing an agent in action has been proven to b...
Evolution of cooperation and competition can appear when multiple adaptive agents share a biological...
Individuals tend to cooperate or collaborate to reach a common goal when the going gets tough creati...
Evolution of cooperation and competition can appear when multiple adaptive agents share a biological...
When deploying autonomous agents in the real world, we need effective ways of communicating objectiv...
In the future, artificial learning agents are likely to become increasingly widespread in our societ...
A longstanding problem in the area of reinforcement learning is human-agent col- laboration. As past...
Interaction of humans and AI systems is becoming ubiquitous. Specifically, recent advances in machin...
The TAMER framework, which provides a way for agents to learn to solve tasks using human-generated r...
Cooperation is a widespread phenomenon in nature that has also been a cornerstone in the development...
For years, researchers have demonstrated the viability and applicability of game theory principles t...
Learning from rewards generated by a human trainer observing an agent in action has proven to be a p...
Mutual learning is an emerging field in intelligent systems which takes inspiration from naturally i...
The intuitive collaboration of humans and intel-ligent robots (embodied AI) in the real-world is an ...
In this paper, we introduce a new approach to Reinforcement Learning (RL) called “supervised attenti...
Learning from rewards generated by a human trainer observing an agent in action has been proven to b...
Evolution of cooperation and competition can appear when multiple adaptive agents share a biological...
Individuals tend to cooperate or collaborate to reach a common goal when the going gets tough creati...
Evolution of cooperation and competition can appear when multiple adaptive agents share a biological...
When deploying autonomous agents in the real world, we need effective ways of communicating objectiv...
In the future, artificial learning agents are likely to become increasingly widespread in our societ...
A longstanding problem in the area of reinforcement learning is human-agent col- laboration. As past...
Interaction of humans and AI systems is becoming ubiquitous. Specifically, recent advances in machin...
The TAMER framework, which provides a way for agents to learn to solve tasks using human-generated r...