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Tight Universal Bounds for Partially Presorted Pareto Front and Convex Hull

Published: December 6, 2025 | arXiv ID: 2512.06559v1

By: Ivor van der Hoog, Eva Rotenberg, Daniel Rutschmann

Potential Business Impact:

Makes computer sorting faster by understanding data order.

Business Areas:
Productivity Tools Software

TimSort is a well-established sorting algorithm whose running time depends on how sorted the input already is. Recently, Eppstein, Goodrich, Illickan, and To designed algorithms inspired by TimSort for Pareto front, planar convex hull, and two other problems. For each of these problems, they define a Range Partition Entropy; a function $H$ mapping lists $I$ that store $n$ points to a number between $0$ and $\log n$. Their algorithms have, for each list of points $I$, a running time of $O(n(1 + H(I)))$. In this paper, we provide matching lower bounds for the Pareto front and convex hull algorithms by Eppstein, Goodrich, Illickan, and To. In particular, we show that their algorithm does not correspond to TimSort (or related stack-based MergeSort variants) but rather to a variant of QuickSort. From this, we derive an intuitive notion of universal optimality. We show comparison-based lower bounds that prove that the algorithms by Eppstein, Goodrich, Illickan and To are universally optimal under this notion of universal optimality.

Page Count
24 pages

Category
Computer Science:
Computational Geometry