Resolving Infeasibility of Linear Systems: A Parameterized Approach
September 05, 2022 Β· Declared Dead Β· π International Symposium on Parameterized and Exact Computation
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Authors
KristΓ³f BΓ©rczi, Alexander GΓΆke, Lydia Mirabel Mendoza-Cadena, Matthias Mnich
arXiv ID
2209.02017
Category
cs.DS: Data Structures & Algorithms
Citations
4
Venue
International Symposium on Parameterized and Exact Computation
Last Checked
4 months ago
Abstract
Deciding feasibility of large systems of linear equations and inequalities is one of the most fundamental algorithmic tasks. However, due to data inaccuracies or modeling errors, in practical applications one often faces linear systems that are infeasible. Extensive theoretical and practical methods have been proposed for post-infeasibility analysis of linear systems. This generally amounts to detecting a feasibility blocker of small size $k$, which is a set of equations and inequalities whose removal or perturbation from the large system of size $m$ yields a feasible system. This motivates a parameterized approach towards post-infeasibility analysis, where we aim to find a feasibility blocker of size at most $k$ in fixed-parameter time $f(k) \cdot m^{O(1)}$. We establish parameterized intractability ($W[1]$- and $NP$-hardness) results already in very restricted settings for different choices of the parameters maximum size of a deletion set, number of positive/negative right-hand sides, treewidth, pathwidth and treedepth. Additionally, we rule out a polynomial compression for MinFB parameterized by the size of a deletion set and the number of negative right-hand sides. Furthermore, we develop fixed-parameter algorithms parameterized by various combinations of these parameters when every row of the system corresponds to a difference constraint. Our algorithms capture the case of Directed Feedback Arc Set, a fundamental parameterized problem whose fixed-parameter tractability was shown by Chen et al. (STOC 2008).
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