From External to Swap Regret 2.0: An Efficient Reduction and Oblivious Adversary for Large Action Spaces
Yuval Dagan, Constantinos Daskalakis, Maxwell Fishelson, Noah, Golowich

TL;DR
This paper introduces a new reduction from swap-regret to external-regret minimization that works for large or infinite action spaces, improving efficiency and extending theoretical guarantees in online learning and game theory.
Contribution
It presents a novel reduction that does not require finite action spaces, enabling efficient swap-regret minimization and establishing new links between no-regret learning and correlated equilibria.
Findings
Reduces swap-regret minimization complexity to O(N) per iteration.
Provides lower bounds for oblivious adversaries and distribution-based learners.
Ensures existence of approximate correlated equilibria in broader settings.
Abstract
We provide a novel reduction from swap-regret minimization to external-regret minimization, which improves upon the classical reductions of Blum-Mansour [BM07] and Stolz-Lugosi [SL05] in that it does not require finiteness of the space of actions. We show that, whenever there exists a no-external-regret algorithm for some hypothesis class, there must also exist a no-swap-regret algorithm for that same class. For the problem of learning with expert advice, our result implies that it is possible to guarantee that the swap regret is bounded by {\epsilon} after rounds and with per iteration complexity, where is the number of experts, while the classical reductions of Blum-Mansour and Stolz-Lugosi require rounds and at least per iteration complexity. Our result comes with an associated lower bound, which -- in contrast to…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Machine Learning and Algorithms · Computability, Logic, AI Algorithms
MethodsSparse Evolutionary Training
