A two-step approach for improving efficiency of feedforward Multilayer Perceptrons network

S. Ullah, Z. Hussain
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引用次数: 1

Abstract

An Artificial Neural Network has got greater importance in the field of data mining. Although it may have complex structure, long training time, and uneasily understandable representation of results, neural network has high accuracy and is preferable in data mining. This research paper is aimed to improve efficiency and to provide accurate results on the basis of same behaviour data. To achieve these objectives, an algorithm is proposed that uses two data mining techniques, that is, attribute selection method and cluster analysis. The algorithm works by applying attribute selection method to eliminate irrelevant attributes, so that input dimensionality is reduced to only those attributes which contribute in the training process. Then after, the whole dataset is partitioned into n clusters which are finally fed into Multilayer Perceptrons network based on backpropagation algorithm to carry out blockwise and parallel training.
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一种提高前馈多层感知器网络效率的两步法
人工神经网络在数据挖掘领域得到了越来越重要的应用。尽管神经网络存在结构复杂、训练时间长、结果表示不容易理解等问题,但其精度高,在数据挖掘中具有较好的应用前景。本文旨在提高效率,并在相同行为数据的基础上提供准确的结果。为了实现这些目标,本文提出了一种利用属性选择方法和聚类分析两种数据挖掘技术的算法。该算法采用属性选择方法剔除不相关的属性,从而将输入维数降为对训练过程有贡献的属性。然后将整个数据集划分为n个聚类,最后将聚类送入基于反向传播算法的多层感知器网络,进行分块并行训练。
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