학술논문

Quadratic Time Algorithms Appear to be Optimal for Sorting Evolving Data
Document Type
Working Paper
Source
2018 Proceedings of the Twentieth Workshop on Algorithm Engineering and Experiments (ALENEX) 87-96
Subject
Computer Science - Data Structures and Algorithms
Language
Abstract
We empirically study sorting in the evolving data model. In this model, a sorting algorithm maintains an approximation to the sorted order of a list of data items while simultaneously, with each comparison made by the algorithm, an adversary randomly swaps the order of adjacent items in the true sorted order. Previous work studies only two versions of quicksort, and has a gap between the lower bound of Omega(n) and the best upper bound of O(n log log n). The experiments we perform in this paper provide empirical evidence that some quadratic-time algorithms such as insertion sort and bubble sort are asymptotically optimal for any constant rate of random swaps. In fact, these algorithms perform as well as or better than algorithms such as quicksort that are more efficient in the traditional algorithm analysis model.