\ua9 2017 Neural information processing systems foundation. All rights reserved. We consider a two-player sequential game in which agents have the same reward function but may disagree on the transition probabilities of an underlying Markovian model of the world. By committing to play a specific policy, the agent with the correct model can steer the behavior of the other agent, and seek to improve utility. We model this setting as a multi-view decision process, which we use to formally analyze the positive effect of steering policies. Furthermore, we develop an algorithm for computing the agents\u27 achievable joint policy, and we experimentally show that it can lead to a large utility increase when the agents\u27 models diverge
Multi-agent decision problems, in which independent agents have to agree on a joint plan of action o...
In this paper I present a model of how individuals make voting decisions in the setting of a continu...
[[abstract]]Game theory is considered as an efficient framework in dealing with decision making prob...
Problems where agents wish to cooperate for a common goal, but disagree on their view of reality ar...
In strategic situations, humans infer the state of mind of others, e.g., emotions or intentions, ada...
We consider decision-making and game scenarios in which an agent is limited by his/her computational...
Algorithmically designed reward functions can influence groups of learning agents toward measurable ...
This paper extends the framework of partially observable Markov decision processes (POMDPs) to multi...
Complex human-engineered systems involve an interconnection of multiple decision makers (or agents) ...
Decision analysis has traditionally been applied to choices under uncertainty involving a single dec...
Much of AI is concerned with the design of intelligent agents. A complementary challenge is to under...
Multi-agent systems that use game-theoretic analysis for decision making traditionally take a normat...
Decision analysis has traditionally been applied to choices under uncertainty involving a single dec...
We present a novel perception model named Herd's Eye View (HEV) that adopts a global perspective der...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
Multi-agent decision problems, in which independent agents have to agree on a joint plan of action o...
In this paper I present a model of how individuals make voting decisions in the setting of a continu...
[[abstract]]Game theory is considered as an efficient framework in dealing with decision making prob...
Problems where agents wish to cooperate for a common goal, but disagree on their view of reality ar...
In strategic situations, humans infer the state of mind of others, e.g., emotions or intentions, ada...
We consider decision-making and game scenarios in which an agent is limited by his/her computational...
Algorithmically designed reward functions can influence groups of learning agents toward measurable ...
This paper extends the framework of partially observable Markov decision processes (POMDPs) to multi...
Complex human-engineered systems involve an interconnection of multiple decision makers (or agents) ...
Decision analysis has traditionally been applied to choices under uncertainty involving a single dec...
Much of AI is concerned with the design of intelligent agents. A complementary challenge is to under...
Multi-agent systems that use game-theoretic analysis for decision making traditionally take a normat...
Decision analysis has traditionally been applied to choices under uncertainty involving a single dec...
We present a novel perception model named Herd's Eye View (HEV) that adopts a global perspective der...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
Multi-agent decision problems, in which independent agents have to agree on a joint plan of action o...
In this paper I present a model of how individuals make voting decisions in the setting of a continu...
[[abstract]]Game theory is considered as an efficient framework in dealing with decision making prob...