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A Hybrid Data Mining Approach for Knowledge Extraction and Classification in Medical Databases

机译:一种用于医学数据库的知识提取和分类的混合数据挖掘方法

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摘要

This paper presents a novel hybrid data mining approach for knowledge extraction and classification in medical databases. The approach combines self organizing map, k-means and naive bayes with a neural network based classifier. The idea is to cluster all data in soft clusters using neural and statistical clustering and fuse them using serial and parallel fusion in conjunction with a neural classifier. The approach has been implemented and tested on a benchmark medical database. The preliminary experiments are very promising.
机译:本文提出了一种新的混合数据挖掘方法,用于医疗数据库的知识提取和分类。该方法将自组织地图,k均值和天真贝斯与基于神经网络的分类器结合。该想法是使用神经和统计聚类聚类软群中的所有数据,并使用串行和并行融合与神经分类器结合使用。该方法已经在基准医疗数据库上实施和测试。初步实验非常有前途。

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