AbstractThis paper studies information exchange in collaborative group activities involving mixed networks of people and computer agents. It introduces the concept of “nearly decomposable” decision-making problems to address the complexity of information exchange decisions in such multi-agent settings. This class of decision-making problems arise in settings which have an action structure that requires agents to reason about only a subset of their partnersʼ actions – but otherwise allows them to act independently. The paper presents a formal model of nearly decomposable decision-making problems, NED-MDPs, and defines an approximation algorithm, NED-DECOP that computes efficient information exchange strategies. The paper shows that NED-DECOP...
As people are increasingly connected to other people and computer agents, forming mixed networks, co...
We investigate the information processing cost associated with performing a collaborative dyadic tas...
In this paper we study automated agents which are designed to encourage humans to take some actions ...
The modeling and prediction of collective human behavior has been one of the key challenges of socia...
Organizations rely on teams for complex decision-making. By bringing diverse information together an...
AbstractComputer systems increasingly carry out tasks in mixed networks, that is in group settings i...
We consider the problem of communication planning for human-machine cooperation in stochastic and pa...
We present a formal framework based on the theory of game with incomplete information [5] for modell...
This thesis is concerned with sequential decision making by multiple agents, whether they are acting...
In multi-agent systems, intelligent agents interact with one another to achieve either individual or...
Complex collaborative activities such as treating patients, co-authoring documents and developing so...
Learning to communicate is an emerging challenge in AI research. It is known that agents interacting...
Group decision tasks that require pooling of information\ud to reach the best decision have been stu...
In this paper, we present a model for estimatingthe performance of a team of agents, based on the ca...
Whether in groups of humans or groups of computer agents, collaboration is most effective between in...
As people are increasingly connected to other people and computer agents, forming mixed networks, co...
We investigate the information processing cost associated with performing a collaborative dyadic tas...
In this paper we study automated agents which are designed to encourage humans to take some actions ...
The modeling and prediction of collective human behavior has been one of the key challenges of socia...
Organizations rely on teams for complex decision-making. By bringing diverse information together an...
AbstractComputer systems increasingly carry out tasks in mixed networks, that is in group settings i...
We consider the problem of communication planning for human-machine cooperation in stochastic and pa...
We present a formal framework based on the theory of game with incomplete information [5] for modell...
This thesis is concerned with sequential decision making by multiple agents, whether they are acting...
In multi-agent systems, intelligent agents interact with one another to achieve either individual or...
Complex collaborative activities such as treating patients, co-authoring documents and developing so...
Learning to communicate is an emerging challenge in AI research. It is known that agents interacting...
Group decision tasks that require pooling of information\ud to reach the best decision have been stu...
In this paper, we present a model for estimatingthe performance of a team of agents, based on the ca...
Whether in groups of humans or groups of computer agents, collaboration is most effective between in...
As people are increasingly connected to other people and computer agents, forming mixed networks, co...
We investigate the information processing cost associated with performing a collaborative dyadic tas...
In this paper we study automated agents which are designed to encourage humans to take some actions ...