FedSEA achieves O(sqrt(T)) regret for smooth convex losses and O(log T) for smooth strongly convex losses in federated online learning under stochastic adversary, with parallelization benefits when temporal heterogeneity is mild relative to gradient noise.
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CAGE uses common-agency games and an EPEC algorithm to compute equilibrium policies that balance multiple conflicting objectives for test-time LLM alignment.
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FedSEA: Achieving Benefit of Parallelization in Federated Online Learning
FedSEA achieves O(sqrt(T)) regret for smooth convex losses and O(log T) for smooth strongly convex losses in federated online learning under stochastic adversary, with parallelization benefits when temporal heterogeneity is mild relative to gradient noise.
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Common-agency Games for Multi-Objective Test-Time Alignment
CAGE uses common-agency games and an EPEC algorithm to compute equilibrium policies that balance multiple conflicting objectives for test-time LLM alignment.