Abstract We investigate a reduction of supervised learning to game playing that reveals new connections and learning methods. For convex one-layer problems, we demonstrate an equivalence between global minimizers of the training problem and Nash equilibria in a simple game. We then show how the game can be extended to general acyclic neural networks with differentiable convex gates, establishing a bijection between the Nash equilibria and critical (or KKT) points of the deep learning problem. Based on these connections we investigate alternative learning methods, and find that regret matching can achieve competitive training performance while producing sparser models than current deep learning strategies
Many important problems in contemporary machine learning involve solving highly non- convex problems...
International audienceThe theoretical analysis of deep neural networks (DNN) is arguably among the m...
We describe an algorithmic framework for an abstract game which we term a convex repeated game. We s...
Machine Learning has recently made significant advances in challenges such as speech and image recog...
This paper explores a fundamental connection between computational learning theory and game theory t...
Game theory is the study of mathematical models of strategic interaction among rational decision-mak...
International audienceWe introduce a general framework for designing and training neural network lay...
This paper studies adaptive learning in the class of weighted network games. This class of games inc...
International audienceIn game-theoretic learning, several agents are simultaneously following their ...
This paper studies adaptive learning in the class of weighted network games. This class of games inc...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
This paper addresses how neural networks learn to play one-shot normal form games through experience...
In this paper we present an approach which given only a set of rules is able to learn to play the ga...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
Many situations involve repeatedly making decisions in an uncertain environment: for instance, decid...
Many important problems in contemporary machine learning involve solving highly non- convex problems...
International audienceThe theoretical analysis of deep neural networks (DNN) is arguably among the m...
We describe an algorithmic framework for an abstract game which we term a convex repeated game. We s...
Machine Learning has recently made significant advances in challenges such as speech and image recog...
This paper explores a fundamental connection between computational learning theory and game theory t...
Game theory is the study of mathematical models of strategic interaction among rational decision-mak...
International audienceWe introduce a general framework for designing and training neural network lay...
This paper studies adaptive learning in the class of weighted network games. This class of games inc...
International audienceIn game-theoretic learning, several agents are simultaneously following their ...
This paper studies adaptive learning in the class of weighted network games. This class of games inc...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
This paper addresses how neural networks learn to play one-shot normal form games through experience...
In this paper we present an approach which given only a set of rules is able to learn to play the ga...
We present a neural network methodology for learning game-playing rules in general. Existing researc...
Many situations involve repeatedly making decisions in an uncertain environment: for instance, decid...
Many important problems in contemporary machine learning involve solving highly non- convex problems...
International audienceThe theoretical analysis of deep neural networks (DNN) is arguably among the m...
We describe an algorithmic framework for an abstract game which we term a convex repeated game. We s...