In high stakes situations decision-makers are often risk-averse and decision-making processes often take place in group settings. This paper studies multiagent decision-theoretic planning under Markov decision processes (MDPs) framework with considering the change of agent’s risk attitude as his wealth level varies. Based on one-switch utility function that describes agent’s risk attitude change with his wealth level, we give the additive and multiplicative aggregation models of group utility and adopt maximizing expected group utility as planning objective. When the wealth level approaches infinity, the characteristics of optimal policy are analyzed for the additive and multiplicative aggregation model, respectively. Then a backward-induct...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
Optimality criteria for Markov decision processes have historically been based on a risk neutral for...
This paper presents a decision-theoretic planning approach for probabilistic environments where the ...
Multi-Objective Multi-Agent Planning (MOMAP) addresses the problem of resolving conflicts between in...
In cooperative multiagent planning, it can often be beneficial for an agent to make commitments abou...
Multiagent sequential decision making has seen rapid progress with formal models such as decentrali...
In this paper we propose interaction-driven Markov games (IDMGs), a new model for multiagent decisio...
In a decision-making problem where a group will receive an uncertain payoff which must be divided am...
[[abstract]]In this paper, we propose a robust multiple attributes decision-making (MADM) method bas...
Planning is an essential process in teams of multiple agents pursuing a common goal. When the effect...
In this paper we propose interaction-driven Markov games (IDMGs), a new model for multiagent decisio...
In this paper we focus on distributed multiagent planning under uncertainty. For single-agent planni...
While formal, decision-theoretic models such as the Markov Decision Process (MDP) have greatly advan...
In infinitely repeated games, we also give definitions to risk attitude and reputation. As art infin...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
Optimality criteria for Markov decision processes have historically been based on a risk neutral for...
This paper presents a decision-theoretic planning approach for probabilistic environments where the ...
Multi-Objective Multi-Agent Planning (MOMAP) addresses the problem of resolving conflicts between in...
In cooperative multiagent planning, it can often be beneficial for an agent to make commitments abou...
Multiagent sequential decision making has seen rapid progress with formal models such as decentrali...
In this paper we propose interaction-driven Markov games (IDMGs), a new model for multiagent decisio...
In a decision-making problem where a group will receive an uncertain payoff which must be divided am...
[[abstract]]In this paper, we propose a robust multiple attributes decision-making (MADM) method bas...
Planning is an essential process in teams of multiple agents pursuing a common goal. When the effect...
In this paper we propose interaction-driven Markov games (IDMGs), a new model for multiagent decisio...
In this paper we focus on distributed multiagent planning under uncertainty. For single-agent planni...
While formal, decision-theoretic models such as the Markov Decision Process (MDP) have greatly advan...
In infinitely repeated games, we also give definitions to risk attitude and reputation. As art infin...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
Optimality criteria for Markov decision processes have historically been based on a risk neutral for...
This paper presents a decision-theoretic planning approach for probabilistic environments where the ...