比较模式挖掘的负载平衡算法

IF 0.5 Q4 AUTOMATION & CONTROL SYSTEMS
Boqiang Cao
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引用次数: 0

摘要

为了解决传统的比较模式挖掘在处理高维、大规模数据集时挖掘效率低下和内存溢出的问题,并进一步解除单机自身硬件的限制,本研究提出了一种基于Spark集群环境的并行比较模式挖掘算法。通过构建扩展的数据收集项目树,引入优化的挖掘决策树,改进相应的负载平衡策略,实现了大规模高维数据集的有效挖掘。实验表明,本文提出的算法在小规模低维蘑菇数据集中挖掘的对比模式数量最大值为1883,最小值为1549,略高于分类性能较好的强跳跃揭示模式挖掘方法。在大规模高维数据集US census1990中,研究算法的总体运行时间较cryptogrowth算法低(Tmax为43.2 min, Tmin为18.4 min),最后分别比较了算法本身与改进的轮询算法和加权轮询算法的失败请求率,结果表明改进算法的失败率最低,为4%。实验表明,所研究算法的分类效果良好,改进算法的负载均衡策略有效,算法的整体性能良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Load Balancing Algorithms for Comparative Pattern Mining

Load Balancing Algorithms for Comparative Pattern Mining

Load Balancing Algorithms for Comparative Pattern Mining

For addressing the issues of ineffective mining and memory overflow when dealing with high-dimensional and large-scale datasets with traditional comparative pattern mining, and to further lift the limitation of a single machine’s own hardware, the study proposes a parallel comparative pattern mining algorithm based on Spark cluster environment. By constructing an extended data collection project tree, introducing an optimised decision tree for mining, and improving the related load balancing strategy, effective mining of large-scale and high-dimensional datasets is achieved. Experiments show that the algorithm proposed in the study has a maximum value of 1883 and a minimum value of 1549 for the number of contrasting patterns mined in the small-scale and low-dimensional Mushroom dataset, which is slightly higher than the mining method of strong jump revealed patterns with good classification performance. In the large-scale and high-dimensional dataset US census1990, the overall running time of the algorithm of the study is low compared to the cryptogrowth algorithm (Tmax 43.2 min, Tmin 18.4 min), and finally the failure request rate of the algorithm itself and the improved and weighted polling algorithms are ompared separately, and the results show that the improved algorithm takes the lowest time of 4%. The experiment showcases that the classification effect of the studied algorithm is good, the load balancing strategy of the improved algorithm is effective, and the overall performance of the algorithm is good.

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来源期刊
AUTOMATIC CONTROL AND COMPUTER SCIENCES
AUTOMATIC CONTROL AND COMPUTER SCIENCES AUTOMATION & CONTROL SYSTEMS-
CiteScore
1.70
自引率
22.20%
发文量
47
期刊介绍: Automatic Control and Computer Sciences is a peer reviewed journal that publishes articles on• Control systems, cyber-physical system, real-time systems, robotics, smart sensors, embedded intelligence • Network information technologies, information security, statistical methods of data processing, distributed artificial intelligence, complex systems modeling, knowledge representation, processing and management • Signal and image processing, machine learning, machine perception, computer vision
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