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Distributed Function Mining for Gene Expression Programming Based on Fast Reduction

机译:基于快速约简的基因表达编程分布式函数挖掘

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摘要

For high-dimensional and massive data sets, traditional centralized gene expression programming (GEP) or improved algorithms lead to increased run-time and decreased prediction accuracy. To solve this problem, this paper proposes a new improved algorithm called distributed function mining for gene expression programming based on fast reduction (DFMGEP-FR). In DFMGEP-FR, fast attribution reduction in binary search algorithms (FAR-BSA) is proposed to quickly find the optimal attribution set, and the function consistency replacement algorithm is given to solve integration of the local function model. Thorough comparative experiments for DFMGEP-FR, centralized GEP and the parallel gene expression programming algorithm based on simulated annealing (parallel GEPSA) are included in this paper. For the waveform, mushroom, connect-4 and musk datasets, the comparative results show that the average time-consumption of DFMGEP-FR drops by 89.09%%, 88.85%, 85.79% and 93.06%, respectively, in contrast to centralized GEP and by 12.5%, 8.42%, 9.62% and 13.75%, respectively, compared with parallel GEPSA. Six well-studied UCI test data sets demonstrate the efficiency and capability of our proposed DFMGEP-FR algorithm for distributed function mining.
机译:对于高维和海量数据集,传统的集中式基因表达编程(GEP)或改进的算法导致运行时间增加和预测准确性降低。为了解决这个问题,本文提出了一种新的改进算法,称为分布式函数挖掘,用于基于快速约简的基因表达编程(DFMGEP-FR)。在DFMGEP-FR中,提出了快速二元搜索算法(FAR-BSA)中的归因减少算法,以快速找到最佳归因集,并给出了函数一致性替换算法来解决局部函数模型的集成问题。本文对DFMGEP-FR,集中式GEP和基于模拟退火的并行基因表达编程算法(parallel GEPSA)进行了全面的比较实验。对于波形,蘑菇,connect-4和麝香数据集,比较结果表明,DFMGEP-FR的平均时间消耗分别下降了89.09 %%,88.85%,85.79%和93.06%,而集中式GEP和与平行GEPSA相比分别下降了12.5%,8.42%,9.62%和13.75%。六个经过充分研究的UCI测试数据集证明了我们提出的DFMGEP-FR算法用于分布式函数挖掘的效率和能力。

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