无监督人工神经网络模式识别中特征约简的粗糙集方法

A. Kothari, A. Keskar, Allhad Gokhale, Rucha Deshpande, Pranjali P. Deshmukh
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引用次数: 3

摘要

粗糙集方法在模式识别中的应用可分为预处理阶段、训练阶段和体系结构阶段。本文提出将粗糙神经混合方法应用于模式识别的预处理阶段。在本项目中,首先开发了一种基于Kohonen网络的训练算法。以此为基准,比较纯神经方法和粗糙神经混合方法的结果,证明后者的效率更高。从图像中提取结构和统计特征用于训练过程。通过在原始属性集上计算约简和核,减少属性的数量,从而缩短收敛时间。此外,上述冗余的去除提高了处理速度,降低了硬件复杂度,从而提高了模式识别算法的整体效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rough Set Approach for Feature Reduction in Pattern Recognition through Unsupervised Artificial Neural Network
The rough set approach can be applied in pattern recognition at three different stages: pre-processing stage, training stage and in the architecture. This paper proposes the application of the Rough-Neuro Hybrid Approach in the pre-processing stage of pattern recognition. In this project, a training algorithm has been first developed based on Kohonen network. This is used as a benchmark to compare the results of the pure neural approach with the Rough-Neuro hybrid approach and to prove that the efficiency of the latter is higher. Structural and statistical features have been extracted from the images for the training process. The number of attributes is reduced by calculating reducts and core from the original attribute set, which results into reduction in convergence time. Also, the above removal in redundancy increases speed of the process reduces hardware complexity and thus enhances the overall efficiency of the pattern recognition algorithm.
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