Unlike traditional time series, the action sequences of human decision making usually involve many cognitive processes such as beliefs, desires, intentions, and theory of mind, i.e., what others are thinking. This makes predicting human decision-making challenging to be treated agnostically to the underlying psychological mechanisms. We propose here to use a recurrent neural network architecture based on long short-term memory networks (LSTM) to predict the time series of the actions taken by human subjects engaged in gaming activity, the first application of such methods in this research domain. In this study, we collate the human data from 8 published literature of the Iterated Prisoner's Dilemma comprising 168,386 individual decisions an...
The brain makes flexible and adaptive responses in a complicated and ever-changing environment for a...
The Iowa Gambling Task (IGT) is one of the most common paradigms used to assess decision-making and ...
Feedforward neural networks exhibit excellent object recognition performance and currently provide t...
Abstract When developing models in cognitive science, researchers typically start with their own int...
peer reviewedWhen developing models in cognitive science, researchers typically start with their own...
Computational models are greatly useful in cognitive science in revealing the mechanisms of learning...
Much of human learning in a social context has an interactive nature: What an individual learns is a...
Popular computational models of decision-making make specific assumptions about learning processes t...
This thesis investigates mechanisms of human decision making, building on the fields of psychology a...
Somatic marker theory proposes that body states act as a valence associated with potential choices b...
As an important psychological and social experiment, the Iterated Prisoner's Dilemma (IPD) treats th...
The Game of Dice Task (GDT; Brand et al. in Neuropsychology 19:267–277, 2005a; Psychiatry Res 133:91...
My dissertation lies at the intersection of computer science and the decision sciences. With psychol...
Models in cognitive science are often restricted for the sake of interpretability, and as a result m...
Theories of reward learning in neuroscience have focused on two families of algorithms thought to ca...
The brain makes flexible and adaptive responses in a complicated and ever-changing environment for a...
The Iowa Gambling Task (IGT) is one of the most common paradigms used to assess decision-making and ...
Feedforward neural networks exhibit excellent object recognition performance and currently provide t...
Abstract When developing models in cognitive science, researchers typically start with their own int...
peer reviewedWhen developing models in cognitive science, researchers typically start with their own...
Computational models are greatly useful in cognitive science in revealing the mechanisms of learning...
Much of human learning in a social context has an interactive nature: What an individual learns is a...
Popular computational models of decision-making make specific assumptions about learning processes t...
This thesis investigates mechanisms of human decision making, building on the fields of psychology a...
Somatic marker theory proposes that body states act as a valence associated with potential choices b...
As an important psychological and social experiment, the Iterated Prisoner's Dilemma (IPD) treats th...
The Game of Dice Task (GDT; Brand et al. in Neuropsychology 19:267–277, 2005a; Psychiatry Res 133:91...
My dissertation lies at the intersection of computer science and the decision sciences. With psychol...
Models in cognitive science are often restricted for the sake of interpretability, and as a result m...
Theories of reward learning in neuroscience have focused on two families of algorithms thought to ca...
The brain makes flexible and adaptive responses in a complicated and ever-changing environment for a...
The Iowa Gambling Task (IGT) is one of the most common paradigms used to assess decision-making and ...
Feedforward neural networks exhibit excellent object recognition performance and currently provide t...