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📄 ResearchJuly 15, 2026
Price of Fairness in Bandits: A Tight Minimax Characterization
In bandit problems, standard regret-minimizing algorithms treat exploration as an amortized cost, which can expose early participants to unfair ex-ante losses in settings such as clinical trials. Recent work addresses this by evaluating the sequence of per-round expected rewards through the generali...
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