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The Adversarial Stackelberg Value in Quantitative Games (2004.12918v2)

Published 27 Apr 2020 in cs.GT

Abstract: In this paper, we study the notion of adversarial Stackelberg value for two-player non-zero sum games played on bi-weighted graphs with the mean-payoff and the discounted sum functions. The adversarial Stackelberg value of Player 0 is the largest value that Player 0 can obtain when announcing her strategy to Player 1 which in turn responds with any of his best response. For the mean-payoff function, we show that the adversarial Stackelberg value is not always achievable but epsilon-optimal strategies exist. We show how to compute this value and prove that the associated threshold problem is in NP. For the discounted sum payoff function, we draw a link with the target discounted sum problem which explains why the problem is difficult to solve for this payoff function. We also provide solutions to related gap problems.

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Authors (3)
  1. Emmanuel Filiot (39 papers)
  2. Raffaella Gentilini (4 papers)
  3. Jean-François Raskin (90 papers)
Citations (11)

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