Near-Optimal No-Regret Learning for General Convex Games
Near-Optimal No-Regret Learning for General Convex Games
A recent line of work has established uncoupled learning dynamics such that, when employed by all players in a game, each player's \emph{regret} after $T$ repetitions grows polylogarithmically in $T$, an exponential improvement over the traditional guarantees within the no-regret framework. However, so far these results have only been limited …