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CLASSIFICATION OF TYPES OF FORESTS USING COMPLEMENTARY NEURAL NETWORKS AND STACKINGC

机译:使用互补神经网络和堆叠的森林类型分类

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The combination between stackingC and complementary neural networks is proposed in this paper. This proposed technique is used to classify types of forests which is a multiclass classification problem. Complementary neural networks consist of two opposite neural networks trained to predict truth output and falsity output. StackingC has two levels. Complementary neural networks are applied to both levels. Uncertainty is also used to enhance the classification results. It is found that our proposed technique give better accuracy result than traditional stacking, traditional stackingC, and also the combination between stacking and complementary neural networks.
机译:本文提出了堆叠C和互补神经网络之间的组合。该提出的技术用于对森林的类型进行分类,这是一个多标准分类问题。互补的神经网络由培训的两个相反的神经网络组成,以预测真理输出和虚空输出。 Stackingc有两个级别。互补的神经网络适用于两个级别。不确定性也用于增强分类结果。结果发现,我们所提出的技术比传统的堆叠,传统堆叠,以及堆叠和互补神经网络之间的组合提供更好的准确性结果。

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