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Adaptive Data Mining Algorithm under the Massive Data

机译:大规模数据下的自适应数据挖掘算法

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In order to solve the problem that Network Reduced accuracy and poor convergence in the existing neural network, which because sample large volumes of data and target data-independent. In response to this phenomenon, this paper put forward a data mining based on compensatory fuzzy neural network. It was optimizing was the Compensative Fuzzy Neural Network. And improve the cutting effect base on calculation algorithm. At the end, it was based on the similarity of each cluster objects to clustering process the system data. Through simulation experiments we can see, algorithm can maintain high precision under different circumstances the amount of data. Compared to other algorithms, we can see that it has a large advantage in terms of both accuracy and time-consuming.
机译:为了解决网络降低准确性和现有神经网络的收敛不良的问题,因为样本大量的数据和目标数据无关。响应于这种现象,本文提出了一种基于补偿模糊神经网络的数据挖掘。它是优化的是补偿性模糊神经网络。并改善计算算法的切削效应基础。最后,它基于每个群集对象的相似性对群集过程系统数据。通过仿真实验,我们可以看到,算法可以在不同情况下保持高精度数据。与其他算法相比,我们可以看到它在精度和耗时方面具有很大的优势。

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