In multi-agent systems (MAS), agents rarely act in isolation but tend to achieve their goals through interactions with other agents. To be able to achieve their ultimate goals, individual agents should actively evaluate the impacts on themselves of other agents' behaviors before they decide which actions to take. The impacts are reciprocal, and it is of great interest to model the mutual influence of agent's impacts with one another when they are observing the environment or taking actions in the environment. In this thesis, assuming that the agents are aware of each other's existence and their potential impact on themselves, I develop novel multi-agent reinforcement learning (MARL) methods that can measure the mutual influence between agen...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
We present an approach to reduce the communication required between agents in a Multi-Agent learning...
With great success in Reinforcement Learning’s application to a suite of single-agent environments, ...
A plethora of real world problems, such as the control of autonomous vehicles and drones, packet de...
This paper describes a multi-agent influence learning approach and reinforcement learning adaptatio...
As progress in reinforcement learning (RL) gives rise to increasingly general and powerful artificia...
Mutual learning is an emerging field in intelligent systems which takes inspiration from naturally i...
Humans are capable of attributing latent mental contents such as beliefs, or intentions to others. T...
AbstractA major concern in multi-agent coordination is how to select algorithms that can lead agents...
To achieve general intelligence, agents must learn how to interact with others in a shared environme...
This paper is devoted to the problem of reinforcement learning in multi-agent systems. Multi-agent s...
Being able to accomplish tasks with multiple learners through learning has long been a goal of the m...
Multi-agent reinforcement learning (RL) solves the problem of how each agent should behave optimally...
Research Doctorate - Doctor of Philosophy (PhD)Machine learning in multi-agent domains poses several...
Abstract Multi-agent systems are rapidly nding applications in a variety of domains, including robo...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
We present an approach to reduce the communication required between agents in a Multi-Agent learning...
With great success in Reinforcement Learning’s application to a suite of single-agent environments, ...
A plethora of real world problems, such as the control of autonomous vehicles and drones, packet de...
This paper describes a multi-agent influence learning approach and reinforcement learning adaptatio...
As progress in reinforcement learning (RL) gives rise to increasingly general and powerful artificia...
Mutual learning is an emerging field in intelligent systems which takes inspiration from naturally i...
Humans are capable of attributing latent mental contents such as beliefs, or intentions to others. T...
AbstractA major concern in multi-agent coordination is how to select algorithms that can lead agents...
To achieve general intelligence, agents must learn how to interact with others in a shared environme...
This paper is devoted to the problem of reinforcement learning in multi-agent systems. Multi-agent s...
Being able to accomplish tasks with multiple learners through learning has long been a goal of the m...
Multi-agent reinforcement learning (RL) solves the problem of how each agent should behave optimally...
Research Doctorate - Doctor of Philosophy (PhD)Machine learning in multi-agent domains poses several...
Abstract Multi-agent systems are rapidly nding applications in a variety of domains, including robo...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
We present an approach to reduce the communication required between agents in a Multi-Agent learning...
With great success in Reinforcement Learning’s application to a suite of single-agent environments, ...