Systems of Linear Equations over $\mathbb{F}_2$ and Problems Parameterized Above Average
R. Crowston, G. Gutin, M. Jones, E.J. Kim, I.Z. Ruzsa

TL;DR
This paper investigates the parameterized complexity of maximizing the excess in systems of linear equations over GF(2), providing fixed-parameter tractability results and improved algorithms for related problems.
Contribution
It introduces new fixed-parameter tractability results for Max Lin Above Average and related problems, with improved algorithms and bounds.
Findings
Max Lin AA is fixed-parameter tractable when m ≤ 2^{p(n)} for fixed p(n)=o(n).
Max r-Lin AA and Max Exact r-SAT AA can be solved in 2^{O(k log k)}+m^{O(1)} time.
The paper improves previous algorithms with tighter bounds and broader applicability.
Abstract
In the problem Max Lin, we are given a system of linear equations with variables over in which each equation is assigned a positive weight and we wish to find an assignment of values to the variables that maximizes the excess, which is the total weight of satisfied equations minus the total weight of falsified equations. Using an algebraic approach, we obtain a lower bound for the maximum excess. Max Lin Above Average (Max Lin AA) is a parameterized version of Max Lin introduced by Mahajan et al. (Proc. IWPEC'06 and J. Comput. Syst. Sci. 75, 2009). In Max Lin AA all weights are integral and we are to decide whether the maximum excess is at least , where is the parameter. It is not hard to see that we may assume that no two equations in have the same left-hand side and . Using our maximum excess results, we prove that, under…
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