Decision-theoretic models explain human behavior in choice problems involving uncertainty, in terms of individual tendencies such as risk aversion. However, many classical models of risk require knowing the distribution of possible outcomes (rewards) for all options, limiting their applicability outside of controlled experiments. We study the task of learning such models in contexts where the modeler does not know the distributions but instead can only observe the choices and their outcomes for a user familiar with the decision problems, for example a skilled player playing a digital game. We propose a framework combining two separate components, one for modeling the unknown decision-making environment and another for the risk behavior. By ...
This paper uses data from the popular television game-show, "Deal or No Deal?", to analyse...
This paper uses data from the popular television game-show, "Deal or No Deal?", to analyse the way ...
Humans and animals learn from experience by reducing the probability of sampling alternatives with p...
Decision-theoretic models explain human behavior in choice problems involving uncertainty, in terms ...
This dissertation comprises three chapters on the question of how individuals make choices in situat...
Experience-weighted attraction is the leading model of learning in games. However, it can not obviou...
This paper presents and tests a new learning model of boundedly rational players interacting with na...
We study how learning shapes behavior towards risk when individuals are not assumed to know, or to h...
Often in cooperative situations, many aspects of the decision-making environment are uncertain. We i...
International audienceThe goal of this chapter is to provide a general introduction to decision maki...
Often in cooperative situations, many aspects of the decision-making environment are uncertain. We i...
Despite all the differences offered in theories of utility formation and decisions from experience/ ...
We study “hypothetical reasoning” in games where the impact of risky prospects (chance moves with co...
Contains fulltext : 46935.pdf (publisher's version ) (Open Access)When the environ...
textabstractThe central theme of this dissertation is the analysis of risky choice. The first two ch...
This paper uses data from the popular television game-show, "Deal or No Deal?", to analyse...
This paper uses data from the popular television game-show, "Deal or No Deal?", to analyse the way ...
Humans and animals learn from experience by reducing the probability of sampling alternatives with p...
Decision-theoretic models explain human behavior in choice problems involving uncertainty, in terms ...
This dissertation comprises three chapters on the question of how individuals make choices in situat...
Experience-weighted attraction is the leading model of learning in games. However, it can not obviou...
This paper presents and tests a new learning model of boundedly rational players interacting with na...
We study how learning shapes behavior towards risk when individuals are not assumed to know, or to h...
Often in cooperative situations, many aspects of the decision-making environment are uncertain. We i...
International audienceThe goal of this chapter is to provide a general introduction to decision maki...
Often in cooperative situations, many aspects of the decision-making environment are uncertain. We i...
Despite all the differences offered in theories of utility formation and decisions from experience/ ...
We study “hypothetical reasoning” in games where the impact of risky prospects (chance moves with co...
Contains fulltext : 46935.pdf (publisher's version ) (Open Access)When the environ...
textabstractThe central theme of this dissertation is the analysis of risky choice. The first two ch...
This paper uses data from the popular television game-show, "Deal or No Deal?", to analyse...
This paper uses data from the popular television game-show, "Deal or No Deal?", to analyse the way ...
Humans and animals learn from experience by reducing the probability of sampling alternatives with p...