Much of human learning in a social context has an interactive nature: What an individual learns is affected by what other individuals are learning at the same time. Games represent a widely accepted paradigm for representing interactive decision-making. We explored the potential value of neural networks for modeling and predicting human interactive learning in repeated games. We found that even very simple learning networks, driven by regret-based feedback, accurately predict observed human behavior in different experiments on 21 games with unique equilibria in mixed strategies. Introducing regret in the feedback dramatically improved the performance of the neural network. We show that regret-based models provide better predictions of learn...
SummaryHuman subjects are proficient at tracking the mean and variance of rewards and updating these...
When learning from direct experience, neurons in the primate brain have been shown to encode a teach...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
Much of human learning in a social context has an interactive nature: What an individual learns is a...
Previous research has shown that regret-driven neural networks predict behavior in repeated complete...
This is a systematic study on learning in the repeated game from the neuroeconomics perspective. The...
Unlike traditional time series, the action sequences of human decision making usually involve many c...
Evaluating the abilities of others is fundamental for successful economic and social behavior. We in...
This thesis investigates mechanisms of human decision making, building on the fields of psychology a...
To gain insights into the neural basis of such adaptive decision-making processes, we investigated t...
SummaryEvaluating the abilities of others is fundamental for successful economic and social behavior...
In observational learning (OL), organisms learn from observing the behavior of others. There are at ...
This paper considers the use of neural networks to model bounded rational behaviour. The underlying ...
Interactions with conspecifics are key to any social species. In order to navigate this social world...
peer reviewedWhen developing models in cognitive science, researchers typically start with their own...
SummaryHuman subjects are proficient at tracking the mean and variance of rewards and updating these...
When learning from direct experience, neurons in the primate brain have been shown to encode a teach...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
Much of human learning in a social context has an interactive nature: What an individual learns is a...
Previous research has shown that regret-driven neural networks predict behavior in repeated complete...
This is a systematic study on learning in the repeated game from the neuroeconomics perspective. The...
Unlike traditional time series, the action sequences of human decision making usually involve many c...
Evaluating the abilities of others is fundamental for successful economic and social behavior. We in...
This thesis investigates mechanisms of human decision making, building on the fields of psychology a...
To gain insights into the neural basis of such adaptive decision-making processes, we investigated t...
SummaryEvaluating the abilities of others is fundamental for successful economic and social behavior...
In observational learning (OL), organisms learn from observing the behavior of others. There are at ...
This paper considers the use of neural networks to model bounded rational behaviour. The underlying ...
Interactions with conspecifics are key to any social species. In order to navigate this social world...
peer reviewedWhen developing models in cognitive science, researchers typically start with their own...
SummaryHuman subjects are proficient at tracking the mean and variance of rewards and updating these...
When learning from direct experience, neurons in the primate brain have been shown to encode a teach...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...