Optimizing strategic decisions (a.k.a. computing equilibrium) is key to the success of many non-cooperative multi-agent applications. However, in many real-world situations, we may face the exact opposite of this game-theoretic problem -- instead of prescribing equilibrium of a given game, we may directly observe the agents' equilibrium behaviors but want to infer the underlying parameters of an unknown game. This research question, also known as inverse game theory, has been studied in multiple recent works in the context of Stackelberg games. Unfortunately, existing works exhibit quite negative results, showing statistical hardness and computational hardness, assuming follower's perfectly rational behaviors. Our work relaxes the perfect r...
We study the use of reinforcement learning to learn the optimal leader's strategy in Stackelberg gam...
AbstractHow do we build algorithms for agent interactions with human adversaries? Stackelberg games ...
We study an interactive framework that explicitly allows for non-rational behavior. We do not place ...
Modeling the purposeful behavior of imperfect agents from a small number of observations is a challe...
This dissertation combines three contributions to the literature on bounded rationality in games. Th...
Rationality in games and decisions is traditionally understood as requiring that agents act optimall...
Predicting strategic goal-oriented multi-agent behavior from observations of play is a ubiquitous ta...
Modeling the purposeful behavior of imper-fect agents from a small number of obser-vations is a chal...
We study an interactive framework that explicitly allows for nonrational behavior. We do not place a...
A central question in game theory, learning, and other fields is how a rational intelligent agent sh...
Algorithmic game theory attempts to mathematically capture behavior in strategic situations, in whic...
Title from PDF of title page (University of Missouri--Columbia, viewed on May 21, 2012).The entire t...
Non-classical models of economic behaviour, usually summarised under the notion of 'Bounded Rational...
We study an interactive framework that explicitly allows for nonrational behavior. We do not place a...
This paper introduces a model of ‘theory of mind’, namely, how we represent the intentions and goals...
We study the use of reinforcement learning to learn the optimal leader's strategy in Stackelberg gam...
AbstractHow do we build algorithms for agent interactions with human adversaries? Stackelberg games ...
We study an interactive framework that explicitly allows for non-rational behavior. We do not place ...
Modeling the purposeful behavior of imperfect agents from a small number of observations is a challe...
This dissertation combines three contributions to the literature on bounded rationality in games. Th...
Rationality in games and decisions is traditionally understood as requiring that agents act optimall...
Predicting strategic goal-oriented multi-agent behavior from observations of play is a ubiquitous ta...
Modeling the purposeful behavior of imper-fect agents from a small number of obser-vations is a chal...
We study an interactive framework that explicitly allows for nonrational behavior. We do not place a...
A central question in game theory, learning, and other fields is how a rational intelligent agent sh...
Algorithmic game theory attempts to mathematically capture behavior in strategic situations, in whic...
Title from PDF of title page (University of Missouri--Columbia, viewed on May 21, 2012).The entire t...
Non-classical models of economic behaviour, usually summarised under the notion of 'Bounded Rational...
We study an interactive framework that explicitly allows for nonrational behavior. We do not place a...
This paper introduces a model of ‘theory of mind’, namely, how we represent the intentions and goals...
We study the use of reinforcement learning to learn the optimal leader's strategy in Stackelberg gam...
AbstractHow do we build algorithms for agent interactions with human adversaries? Stackelberg games ...
We study an interactive framework that explicitly allows for non-rational behavior. We do not place ...