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Parallel neural-based hybrid data mining ensemble

机译:并行神经基混合数据挖掘集合

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摘要

This paper presents a novel hybrid data mining ensemble approach which is an effective combination of various clustering methods, in order to utilize the strengths of individual technique and compensate for each other’s weaknesses. The proposed approach is formulated to cluster extracted features into ‘soft’ clusters using unsupervised learning strategies and fuse the cluster decisions using parallel fusion in conjunction with a neural classifier. The proposed approach has been implemented and evaluated on the benchmark databases such as Digital Database for Screening Mammograms, Wisconsin Breast Cancer and ECG Arrhythmia. A comparative performance analysis of the proposed hybrid data mining approach with other existing approaches is presented. The experimental results demonstrate the effectiveness of the proposed approach.
机译:本文提出了一种新型混合数据挖掘合并方法,是各种聚类方法的有效组合,以利用各种技术的优势并补偿彼此的弱点。所提出的方法被制定为使用无监督的学习策略将集群提取的特征与“软”群集中的“软”群体一起使用并行融合与神经分类器结合使用并行融合。已经在基准数据库(如数字数据库)的基准数据库中实施和评估了所提出的方法,用于筛选乳腺照片,威斯康星州乳腺癌和ECG心律失常。提出了拟议的混合数据采矿方法与其他现有方法的比较绩效分析。实验结果表明了所提出的方法的有效性。

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