A direct reduction of PPAD Lemke-verified linear complementarity problems to bimatrix games
Ilan Adler, Sushil Verma

TL;DR
This paper presents a simple, explicit reduction from PPAD-verified linear complementarity problems to symmetric bimatrix games, facilitating practical solution methods and insights into the structure of such problems.
Contribution
It introduces a straightforward reduction from LCPs verified as PPAD problems via Lemke's algorithm to symmetric 2-NASH, improving practicality and understanding.
Findings
Reduction works for all positive d except a measure-zero subset.
End points of the Lemke graph correspond to Nash equilibria or secondary rays.
Verification of PPAD membership can be done in polynomial time.
Abstract
The linear complementarity problem, LCP(q,M), is defined as follows. For given M,q find z such that q+Mz>=0, z>=0, z(q + M z)=0,or certify that there is no such z. It is well known that the problem of finding a Nash equilibrium for a bimatrix game (2-NASH) can be formulated as a linear complementarity problem (LCP). In addition, 2-NASH is known to be complete in the complexity class PPAD (Polynomial-time Parity Argument Directed). However, the ingeniously constructed reduction (which is designed for any PPAD problem) is very complicated, so while of great theoretical significance, it is not practical for actually solving an LCP via 2-NASH, and it may not provide the potential insight that can be gained from studying the game obtained from a problem formulated as an LCP (e.g. market equilibrium). The main goal of this paper is the construction of a simple explicit reduction of any…
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Taxonomy
TopicsGame Theory and Applications · Game Theory and Voting Systems · Auction Theory and Applications
