基于Spark的快速启发式属性约简算法

Mincheng Chen, Jingling Yuan, Lin Li, Dongling Liu, Tao Li
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引用次数: 8

摘要

由绿色数据中心的能耗统计和其他相关数据组成的能源数据急剧增长。能源数据具有很大的价值,但其中的许多属性是冗余和不必要的。因此,能量数据的属性约简被认为是一个关键步骤。然而,现有的许多属性约简算法往往计算时间较长。为了解决这些问题,我们扩展了粗糙集的方法来构建数据中心能耗知识表示系统。利用内存计算的优势,提出了一种基于Spark的能源数据属性约简算法。在该算法中,我们使用了一种启发式的衡量属性重要性的公式来减少搜索空间,并使用了一种高效的算法来简化能耗决策表,进一步提高了计算效率。实验结果表明,该算法的性能比传统的基于Spark的属性约简算法提高了0.28倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fast Heuristic Attribute Reduction Algorithm Using Spark
Energy data, which consists of energy consumption statistics and other related data in green data centers, grows dramatically. The energy data has great value, but many attributes within it are redundant and unnecessary. Thus attribute reduction for the energy data has been conceived as a critical step. However, many existing attribute reduction algorithms are often computationally time-consuming. To address these issues, we extend the methodology of rough sets to construct data center energy consumption knowledge representation system. By taking good advantage of in-memory computing, an attribute reduction algorithm for energy data using Spark is proposed. In this algorithm, we use a heuristic formula for measuring the significance of attribute to reduce search space, and an efficient algorithm for simplifying energy consumption decision table, which further improve the computation efficiency. The experimental results show the speed of our algorithm gains up to 0.28X performance improvement over the traditional attribute reduction algorithm using Spark.
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