贪心多项式神经网络在数据挖掘分类任务中的应用

R. Dash, B. Misra, P. Dash, G. Panda
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摘要

本文提出了一种贪心多项式神经网络(GPNN)用于分类任务。分类任务是数据挖掘中研究最多的任务之一。在解决数据挖掘分类任务时,经典算法如多项式神经网络(PNN)由于网络在训练过程中不断增长,即每一层的部分描述(pd)逐代增长,因此计算时间较长。与PNN不同的是,该工作将部分描述的增长限制在单层。然后使用贪婪技术来选择pd的子集,这些子集通常可以最好地映射输入输出关系。将该模型的性能与PNN的结果进行了比较。仿真结果表明,GPNN在数据挖掘领域的性能令人鼓舞,在处理时间方面也优于PNN模型。
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Greedy polynomial neural network for classification task in data mining
In this paper, a greedy polynomial neural network (GPNN) for the task of classification is proposed. Classification task is one of the most studied tasks of data mining. In solving classification task of data mining, the classical algorithm such as Polynomial Neural Network (PNN) takes large computation time because the network grows over the training period i.e. the partial descriptions (PDs) in each layer grows in successive generations. Unlike PNN this proposed work restricts the growth of partial descriptions to a single layer. A greedy technique is then used to select a subset of PDs those who can best map the input-output relation in general. Performance of this model is compared with the results obtained from PNN. Simulation result shows that the performance of GPNN is encouraging for harnessing its power in data mining area and also better in terms of processing time than the PNN model.
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