Qualitative Analysis of Concurrent Mean-payoff Games
Krishnendu Chatterjee, Rasmus Ibsen-Jensen

TL;DR
This paper analyzes concurrent mean-payoff games, establishing determinacy, strategy complexity, and efficient algorithms for qualitative objectives, while highlighting the computational difficulty of quantitative cases.
Contribution
It provides the first comprehensive qualitative analysis of concurrent mean-payoff games, including determinacy results, strategy complexity, and quadratic algorithms for winning set computation.
Findings
Qualitative determinacy results for almost-sure and positive winning sets.
Optimal strategy complexity characterizations for both players.
Quadratic time algorithms for computing winning sets.
Abstract
We consider concurrent games played by two-players on a finite-state graph, where in every round the players simultaneously choose a move, and the current state along with the joint moves determine the successor state. We study a fundamental objective, namely, mean-payoff objective, where a reward is associated to each transition, and the goal of player 1 is to maximize the long-run average of the rewards, and the objective of player 2 is strictly the opposite. The path constraint for player 1 could be qualitative, i.e., the mean-payoff is the maximal reward, or arbitrarily close to it; or quantitative, i.e., a given threshold between the minimal and maximal reward. We consider the computation of the almost-sure (resp. positive) winning sets, where player 1 can ensure that the path constraint is satisfied with probability 1 (resp. positive probability). Our main results for qualitative…
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