Map/Reduce框架下粗糙集数据挖掘算法的改进

Ying Wang, Jiqing Liu, Qiongqiong Liu
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引用次数: 2

摘要

为了解决传统空间数据挖掘算法在处理海量空间数据信息时空间和计算能力不足的问题,在空间数据挖掘过程中采用了粗糙集与分布式框架相结合的方法。本文基于粗糙集的基本理论和Map/Reduce框架,对传统的空间数据挖掘粗糙集算法进行并行改进,提高了算法的效率和成本。最后,通过一个空间数据算例验证了改进算法的可行性。实验结果表明,改进的空间数据挖掘粗糙集并行算法不仅能有效地提高算法效率,而且能满足人们处理海量空间数据的需求,这是传统粗糙集算法难以做到的。改进的粗糙集并行空间数据挖掘算法可以有效地解决海量空间数据存储不足和计算能力挖掘不足的问题。
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Improvement of the Data Mining Algorithm of Rough Set under the Framework of Map/Reduce
In order to solve the problem that there is a shortage of space and computing power of the traditional spatial data mining algorithm during the processing for massive spatial data information, a combination of Rough set and distributed framework is used in the process of spatial data mining. In this paper, parallel improvement is taken into the algorithm of the traditional Rough set for spatial data mining based on the basic theory of rough set and the Map/Reduce framework, which is efficient and cheap. Then, a spatial data example is utilized to show the feasibility of the improved parallel algorithm. Empirical results show that the improved parallel algorithm of Rough set for spatial data mining can not only effectively improve the efficiency of the algorithm but also meet the need of people to deal with massive spatial data which is hardly to the algorithm of traditional Rough set. Improved Rough set parallel algorithm for spatial data mining can effectively solve the problem of shortage for massive spatial data storage and computing power mining.
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