Smooth Nash Equilibria: Algorithms and Complexity
Constantinos Daskalakis, Noah Golowich, Nika Haghtalab and, Abhishek Shetty

TL;DR
This paper introduces a relaxed variant of Nash equilibrium called $\sigma$-smooth Nash equilibrium, which is computationally more tractable to find than traditional Nash equilibria, especially under certain parameter regimes.
Contribution
The paper defines $\sigma$-smooth Nash equilibria and demonstrates algorithms with constant or polynomial time complexity for their computation, contrasting with the intractability of standard Nash equilibria.
Findings
Constant-time randomized algorithm for weak $\sigma$-smooth Nash equilibria with fixed parameters.
Polynomial-time deterministic algorithm for strong $\sigma$-smooth Nash equilibria under fixed parameters.
Intractability results when $\sigma$ or $\epsilon$ are inverse polynomial.
Abstract
A fundamental shortcoming of the concept of Nash equilibrium is its computational intractability: approximating Nash equilibria in normal-form games is PPAD-hard. In this paper, inspired by the ideas of smoothed analysis, we introduce a relaxed variant of Nash equilibrium called -smooth Nash equilibrium, for a smoothness parameter . In a -smooth Nash equilibrium, players only need to achieve utility at least as high as their best deviation to a -smooth strategy, which is a distribution that does not put too much mass (as parametrized by ) on any fixed action. We distinguish two variants of -smooth Nash equilibria: strong -smooth Nash equilibria, in which players are required to play -smooth strategies under equilibrium play, and weak -smooth Nash equilibria, where there is no such requirement. We show that both…
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