This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of human information processing, can learn to backward induce in a two-stage game with a unique subgame-perfect Nash equilibrium. The NNs were found to predict the Nash equilibrium approximately 70% of the time in new games. Similarly to humans, the neural network agents are also found to suffer from subgame and truncation inconsistency, supporting the contention that they are appropriate models of general learning in humans. The agents were found to behave in a bounded rational manner as a result of the endogenous emergence of decision heuristics. In particular a very simple heuristic socialmax, that chooses the cell with the highest social payo...
This paper presents a neural network based methodology for examining the learning of game-playing ru...
Backward induction is a benchmark of game theoretic rationality, yet surprisingly little is known as...
By positing that complex, abstract memories can be formalised as network attractors, the present pap...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
This paper addresses how neural networks learn to play one-shot normal form games through experience...
This paper addresses how neural networks learn to play one-shot normal form games through experience...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
Previous research has shown that regret-driven neural networks predict behavior in repeated complete...
Previous research has shown that regret-driven neural networks predict behavior in repeated complete...
Previous research has shown that regret-driven neural networks predict behavior in repeated complete...
This paper presents a neural network based methodology for examining the learning of game-playing ru...
Backward induction is a benchmark of game theoretic rationality, yet surprisingly little is known as...
By positing that complex, abstract memories can be formalised as network attractors, the present pap...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
This paper addresses how neural networks learn to play one-shot normal form games through experience...
This paper addresses how neural networks learn to play one-shot normal form games through experience...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
Previous research has shown that regret-driven neural networks predict behavior in repeated complete...
Previous research has shown that regret-driven neural networks predict behavior in repeated complete...
Previous research has shown that regret-driven neural networks predict behavior in repeated complete...
This paper presents a neural network based methodology for examining the learning of game-playing ru...
Backward induction is a benchmark of game theoretic rationality, yet surprisingly little is known as...
By positing that complex, abstract memories can be formalised as network attractors, the present pap...