Many important problems in contemporary machine learning involve solving highly non- convex problems in sampling, optimization, or games. The absence of convexity poses significant challenges to convergence analysis of most training algorithms, and in some cases (such as min-max games) it is not even known whether common training algorithms converge or not. In this thesis, we aim to partially bridge the gap by 1. Proposing a new sampling framework to transform non-convex problems in to convex ones. 2. Characterizing the convergent sets of a wide family of popular algorithms for min-max optimization. 3. Devising provably convergent algorithms for finding mixed Nash Equilibria of infinite-dimensional bi-affine games. Our theory has several ...
International audienceIn game-theoretic learning, several agents are simultaneously following their ...
We generalize results of earlier work on learning in Bayesian games by allowing players to make deci...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
Compared to minimization, the min-max optimization in machine learning applications is considerably ...
We provide several applications of Optimistic Mirror Descent, an online learning algorithm based on ...
Abstract We investigate a reduction of supervised learning to game playing that reveals new connecti...
In two-player non-cooperative games whose strategy sets are Hilbert spaces, in order to approach Nas...
Min-max optimization problems (i.e., min-max games) have been attracting a great deal of attention b...
Machine Learning has recently made significant advances in challenges such as speech and image recog...
© Constantinos Daskalakis and Ioannis Panageas. Motivated by applications in Game Theory, Optimizati...
Nonconvex minimax problems appear frequently in emerging machine learning applications, such as gene...
Data-driven model training is increasingly relying on finding Nash equilibria with provable techniqu...
Many fundamental machine learning tasks can be formulated as min-max optimization. This motivates us...
Motivated by applications in Game Theory, Optimization, and Generative Adversarial Networks, recent ...
We develop an algorithmic framework for solving convex optimization problems using no-regret game dy...
International audienceIn game-theoretic learning, several agents are simultaneously following their ...
We generalize results of earlier work on learning in Bayesian games by allowing players to make deci...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
Compared to minimization, the min-max optimization in machine learning applications is considerably ...
We provide several applications of Optimistic Mirror Descent, an online learning algorithm based on ...
Abstract We investigate a reduction of supervised learning to game playing that reveals new connecti...
In two-player non-cooperative games whose strategy sets are Hilbert spaces, in order to approach Nas...
Min-max optimization problems (i.e., min-max games) have been attracting a great deal of attention b...
Machine Learning has recently made significant advances in challenges such as speech and image recog...
© Constantinos Daskalakis and Ioannis Panageas. Motivated by applications in Game Theory, Optimizati...
Nonconvex minimax problems appear frequently in emerging machine learning applications, such as gene...
Data-driven model training is increasingly relying on finding Nash equilibria with provable techniqu...
Many fundamental machine learning tasks can be formulated as min-max optimization. This motivates us...
Motivated by applications in Game Theory, Optimization, and Generative Adversarial Networks, recent ...
We develop an algorithmic framework for solving convex optimization problems using no-regret game dy...
International audienceIn game-theoretic learning, several agents are simultaneously following their ...
We generalize results of earlier work on learning in Bayesian games by allowing players to make deci...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...