Complexity and Approximation for Discriminating and Identifying Code Problems in Geometric Setups
Sanjana Dey, Florent Foucaud, Subhas C Nandy, Arunabha Sen

TL;DR
This paper investigates the computational complexity and approximation algorithms for geometric discriminating code problems in one and two dimensions, revealing NP-completeness in discrete cases and providing polynomial-time approximation schemes.
Contribution
It establishes NP-completeness for discrete geometric discriminating code problems and develops approximation algorithms and PTAS for specific cases in 1D and 2D.
Findings
Discrete 1D problem is NP-complete.
Polynomial-time 2-approximation algorithm for 1D discrete case.
PTAS for 1D problems with equal-length intervals.
Abstract
We study geometric variations of the discriminating code problem. In the \emph{discrete version} of the problem, a finite set of points and a finite set of objects are given in . The objective is to choose a subset of minimum cardinality such that for each point , the subset covering satisfies , and each pair , , we have . In the \emph{continuous version} of the problem, the solution set can be chosen freely among a (potentially infinite) class of allowed geometric objects. In the 1-dimensional case (), the points in are placed on a horizontal line , and the objects in are finite-length line segments aligned with (called intervals). We show that the discrete version of this problem is NP-complete. This is somewhat…
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Taxonomy
TopicsComputational Geometry and Mesh Generation · Advanced Numerical Analysis Techniques · Advanced Surface Polishing Techniques
