We present a neural network methodology for learning game-playing rules in general. Existing research suggests learning to find a Nash equilibrium in a new game is too difficult a task for a neural network, but says little about what it will do instead. We observe that a neural network trained to find Nash equilibria in a known subset of games will use self-taught rules developed endogenously when facing new games. These rules are close to payoff dominance and its best response. Our findings are consistent with existing experimental results, both in terms of subject's methodology and success rates.Neural networks Normal-form games Bounded rationality
In this work the author analyzes the usage of artificial neural networks in games. The author also a...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
An experiment was conducted where neural networks compete for survival in an evolving population bas...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
This paper presents a neural network based methodology for examining the learning of game-playing ru...
This paper presents a neural network based methodology for examining the learning of game-playing r...
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...
This paper considers the use of neural networks to model bounded rational behaviour. The underlying ...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
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...
In this work the author analyzes the usage of artificial neural networks in games. The author also a...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
An experiment was conducted where neural networks compete for survival in an evolving population bas...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
This paper presents a neural network based methodology for examining the learning of game-playing ru...
This paper presents a neural network based methodology for examining the learning of game-playing r...
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...
This paper considers the use of neural networks to model bounded rational behaviour. The underlying ...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
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...
In this work the author analyzes the usage of artificial neural networks in games. The author also a...
This paper addresses the question of whether neural networks (NNs), a realistic cognitive model of h...
An experiment was conducted where neural networks compete for survival in an evolving population bas...