English

Preprocessing Imprecise Points for the Pareto Front

Computational Geometry 2021-01-18 v1

Abstract

In the preprocessing model for uncertain data we are given a set of regions R which model the uncertainty associated with an unknown set of points P. In this model there are two phases: a preprocessing phase, in which we have access only to R, followed by a reconstruction phase, in which we have access to points in P at a certain retrieval cost C per point. We study the following algorithmic question: how fast can we construct the pareto front of P in the preprocessing model? We show that if R is a set of pairwise-disjoint axis-aligned rectangles, then we can preprocess R to reconstruct the Pareto front of P efficiently. To refine our algorithmic analysis, we introduce a new notion of algorithmic optimality which relates to the entropy of the uncertainty regions. Our proposed uncertainty-region optimality falls on the spectrum between worst-case optimality and instance optimality. We prove that instance optimality is unobtainable in the preprocessing model, whenever the classic algorithmic problem reduces to sorting. Our results are worst-case optimal in the preprocessing phase; in the reconstruction phase, our results are uncertainty-region optimal with respect to real RAM instructions, and instance optimal with respect to point retrievals.

Keywords

Cite

@article{arxiv.2101.06079,
  title  = {Preprocessing Imprecise Points for the Pareto Front},
  author = {Ivor van der Hoog and Irina Kostitsyna and Maarten Löffler and Bettina Speckmann},
  journal= {arXiv preprint arXiv:2101.06079},
  year   = {2021}
}
R2 v1 2026-06-23T22:12:00.876Z