Sorting Algorithm for Medium and Large Data Sets Based on Multi-Level Independent Subarrays

Kiaksar Shirvani Moghaddam, S. Moghaddam
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引用次数: 1

Abstract

In this paper, we propose a new low-complex preprocessing that enables conventional data sorting algorithms to be more efficient for medium and large data sets in a serial/parallel realization. First, we divide the main array into independent subarrays by a multi-level mean-based division. It is realized by calculating the mean value of each level as the pivot to divide its elements into two parts, greater and lower than the pivot, almost in the same lengths with a lower randomness rate to the main array. Then, subarrays can be sorted by the conventional sorting algorithms in a sequential serial realization to extract sorted data gradually or parallel realizations by using independent multi-core structures. It also holds the stability and adaptivity features of the sorting algorithm, if any. The effectiveness of the mean-based pivot to the random one is investigated. To show the superiority of the proposed idea, the simulation results are compared in view of the running time and the number of swaps required to the conventional and proposed serial and parallel Insertion-sort in different lengths of data. Finally, the complexity order of the proposed algorithm in serial and parallel implementations is compared to the conventional one.
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基于多级独立子数组的大中型数据集排序算法
在本文中,我们提出了一种新的低复杂度预处理,使传统的数据排序算法在串行/并行实现中更有效地处理大中型数据集。首先,我们通过基于均值的多级划分将主数组划分为独立的子数组。它是通过计算每一层的平均值作为枢轴来实现的,将其元素分成大于和小于枢轴的两部分,长度几乎相同,对主数组的随机率更低。然后,采用传统的排序算法对子数组进行排序,在顺序串行实现中逐步提取排序后的数据,或者采用独立的多核结构进行并行实现。它还具有排序算法的稳定性和自适应性,如果有的话。研究了均值支点对随机支点的有效性。为了证明所提思想的优越性,在不同数据长度的情况下,对比了传统插入排序和所提串行、并行插入排序的运行时间和交换次数。最后,比较了该算法在串行和并行实现中的复杂度顺序。
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