Multi-agent systems (MASs) are a form of distributed intelligence, where multiple autonomous agents act in a common environment. Numerous complex, real world systems have been successfully optimized using multi-agent reinforcement learning (MARL) in conjunction with the MAS framework. In MARL agents learn by maximizing a scalar reward signal from the environment, and thus the design of the reward function directly affects the policies learned. In this work, we address the issue of appropriate multi-agent credit assignment in stochastic resource management games. We propose two new stochastic games to serve as testbeds for MARL research into resource management problems: the tragic commons domain and the shepherd problem domain. Our empirica...
Learning behaviors in a multiagent environment is crucial for developing and adapting multiagent sys...
Several important real-world problems involve multiple entities interacting with each other and can ...
We study the application of multi-agent reinforcement learning for game-theoretical problems. In par...
Multi-agent systems (MASs) are a form of distributed intelligence, where multiple autonomous agents ...
Multi-Agent Systems (MAS) are a form of distributed intelligence, where multiple autonomous agents a...
Abstract: Abstract in English Multi-agent systems (MASs), as one of the important symbols of Distrib...
Abstract: Multi-agent Credit Assignment (MCA) problem is considered as one of the critical challenge...
Multi-Agent Reinforcement Learning (MARL) is a powerful Machine Learning paradigm, where multiple au...
In this paper we introduce a new multi-agent reinforcement learning algorithm, called exploring self...
In this paper we introduce a new multi-agent reinforcement learning algorithm, called exploring self...
Algorithmically designed reward functions can influence groups of learning agents toward measurable ...
Abstract. Multiagent systems have had a powerful impact on the real world. Many of the systems it st...
We survey the recent work in AI on multi-agent reinforcement learning (that is, learning in stochast...
Thesis (Ph.D.)--University of Washington, 2021Rapid strides made in the development of computing inf...
Potential-based reward shaping has previously been proven to both be equivalent to Q-table initialis...
Learning behaviors in a multiagent environment is crucial for developing and adapting multiagent sys...
Several important real-world problems involve multiple entities interacting with each other and can ...
We study the application of multi-agent reinforcement learning for game-theoretical problems. In par...
Multi-agent systems (MASs) are a form of distributed intelligence, where multiple autonomous agents ...
Multi-Agent Systems (MAS) are a form of distributed intelligence, where multiple autonomous agents a...
Abstract: Abstract in English Multi-agent systems (MASs), as one of the important symbols of Distrib...
Abstract: Multi-agent Credit Assignment (MCA) problem is considered as one of the critical challenge...
Multi-Agent Reinforcement Learning (MARL) is a powerful Machine Learning paradigm, where multiple au...
In this paper we introduce a new multi-agent reinforcement learning algorithm, called exploring self...
In this paper we introduce a new multi-agent reinforcement learning algorithm, called exploring self...
Algorithmically designed reward functions can influence groups of learning agents toward measurable ...
Abstract. Multiagent systems have had a powerful impact on the real world. Many of the systems it st...
We survey the recent work in AI on multi-agent reinforcement learning (that is, learning in stochast...
Thesis (Ph.D.)--University of Washington, 2021Rapid strides made in the development of computing inf...
Potential-based reward shaping has previously been proven to both be equivalent to Q-table initialis...
Learning behaviors in a multiagent environment is crucial for developing and adapting multiagent sys...
Several important real-world problems involve multiple entities interacting with each other and can ...
We study the application of multi-agent reinforcement learning for game-theoretical problems. In par...