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Influence of clustering pre-processing on genetically generated fuzzy knowledge bases

机译:聚类预处理对遗传产生的模糊知识库的影响

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摘要

Automatic knowledge base generation using techniques such as genetic algorithms tend to be highly dependent on the quality and size of the learning data. First of all, large data sets can lead to unnecessary time loss, when smaller data sets could describe the problem as well. Second of all, the presence of noise and outliers can cause the learning algorithm to degenerate. Clustering techniques allow compressing and filtering the data, thus making the generation of fuzzy knowledge bases faster and more accurate. Different clustering algorithms are compared and the validation of the results through a theoretical 3D surface, shows that when compressing the data to 5% of its original size, clustering algorithms accelerate the learning process by up to 94%. Moreover, when the learning data contains noise and/or a large amount of outliers, clustering algorithms can make the results more stable and improve the fitness of the obtained FKBs.
机译:使用诸如遗传算法之类的技术来自动生成知识库在很大程度上取决于学习数据的质量和大小。首先,大型数据集可能导致不必要的时间损失,而较小的数据集也可以描述问题。第二,噪声和离群值的存在会导致学习算法退化。聚类技术可以压缩和过滤数据,从而使模糊知识库的生成更快,更准确。比较了不同的聚类算法,并通过理论3D表面对结果进行了验证,结果表明,将数据压缩到原始大小的5%时,聚类算法最多可将学习过程加快94%。此外,当学习数据包含噪声和/或大量异常值时,聚类算法可以使结果更稳定,并提高获得的FKB的适用性。

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