Application of a Hybrid Classifier to the Recognition of Petrochemical Odors

E. Oliveira, P.G. Campos, Teresa B Ludermir, F. D. Carvalho, W. R. Oliveira
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引用次数: 1

Abstract

Nowadays there are several data mining algorithms applied to the resolution of many different problems, such as the classification of patterns. However, when these algorithms are used separately to classify they usually present an inferior performance compared to the performance obtained by combined models. The bagging and boosting techniques combine models of the same kind in a competitive form, in other words, the output is generally provided by the winning classifier. Alternatively, stacking usually combines different algorithms, constituting a hybrid model. Nevertheless, stacking has a high cost, due to the search for the best models that will be combined to solve a certain problem. Thus, we present a hybrid classifier (HC) to be applied to the recognition of gases derived from petrol at a lower cost and in a cooperative way.
混合分类器在石油化工气味识别中的应用
目前,有几种数据挖掘算法应用于解决许多不同的问题,如模式分类。然而,当这些算法单独使用时,与组合模型相比,它们通常表现出较差的性能。bagging和boosting技术将同类模型以竞争的形式组合在一起,换句话说,输出通常由获胜的分类器提供。或者,叠加通常结合不同的算法,构成混合模型。然而,堆叠的成本很高,因为要寻找最好的模型,这些模型将被组合起来解决某个问题。因此,我们提出了一种混合分类器(HC),以较低的成本和合作的方式应用于汽油衍生气体的识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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