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Fusion effect of SVM in spark architecture for speech data mining in cluster structure

机译:SVM在集群结构中语音数据挖掘火花架构中的融合效应

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Fusion effect of SVM in the Spark architecture for speech data mining in cluster structure is studied in this manuscript. Based on the information entropy of nodes, the data in clusters are fused to eliminate redundant data and improve the efficiency of information fusion. Information entropy is a statistical form based on the characteristics of information representation, which reflects the average amount of information in information. Based on the Spark platform SVM algorithm, the frequent items with the highest support after each sort are directly recursively obtained, and the transaction data set is allocated to each computing node. The structure of the item head table directly affects the efficiency of the algorithm, so optimizing the structure of the item head table can improve the efficiency of the algorithm in constructing FP-Tree, and then improve the efficiency of the whole algorithm. The proposed speech data mining algorithm can cluster, analyze, and comprehensively detection the saliency information, the detection accuracy is much higher than the state-of-the-art models. The experimental results compared with the latest research have reflected that fact that the proposed model has the better performance and robustness.
机译:在本手稿中,研究了SVM在集群结构中的语音数据挖掘出火花架构中的融合效应。基于节点的信息熵,集群中的数据融合以消除冗余数据并提高信息融合的效率。信息熵是一种统计形式,基于信息表示的特征,这反映了信息的平均信息量。基于Spark平台SVM算法,直接递归地获得每种排序后的最高支持的频繁项目,并且将事务数据集分配给每个计算节点。项目头表的结构直接影响算法的效率,因此优化项目头部的结构可以提高构建FP-Tree的算法的效率,然后提高整个算法的效率。所提出的语音数据挖掘算法可以集群,分析和全面检测显着性信息,检测精度远高于最先进的模型。实验结果与最新研究相比,这反映了拟议的模型具有更好的性能和稳健性。

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