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首页> 外文期刊>International Journal of Applied Mathematics and Computer Science >PATTERN LAYER REDUCTION FOR A GENERALIZED REGRESSION NEURAL NETWORK BY USING A SELF-ORGANIZING MAP
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PATTERN LAYER REDUCTION FOR A GENERALIZED REGRESSION NEURAL NETWORK BY USING A SELF-ORGANIZING MAP

机译:基于自组织映射的广义回归神经网络图形层约简

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摘要

In a general regression neural network (GRNN), the number of neurons in the pattern layer is proportional to the number of training samples in the dataset. The use of a GRNN in applications that have relatively large datasets becomes troublesome due to the architecture and speed required. The great number of neurons in the pattern layer requires a substantial increase in memory usage and causes a substantial decrease in calculation speed. Therefore, there is a strong need for pattern layer size reduction. In this study, a self-organizing map (SOM) structure is introduced as a pre-processor for the GRNN. First, an SOM is generated for the training dataset. Second, each training record is labelled with the most similar map unit. Lastly, when a new test record is applied to the network, the most similar map units are detected, and the training data that have the same labels as the detected units are fed into the network instead of the entire training dataset. This scheme enables a considerable reduction in the pattern layer size. The proposed hybrid model was evaluated by using fifteen benchmark test functions and eight different UCI datasets. According to the simulation results, the proposed model significantly simplifies the GRNN's structure without any performance loss.
机译:在一般回归神经网络(GRNN)中,模式层中神经元的数量与数据集中训练样本的数量成比例。由于所需的体系结构和速度,在具有相对较大数据集的应用程序中使用GRNN变得很麻烦。图案层中大量的神经元需要大量使用内存,并导致计算速度大幅下降。因此,强烈需要减小图案层的尺寸。在这项研究中,引入了自组织映射(SOM)结构作为GRNN的预处理器。首先,为训练数据集生成一个SOM。其次,每条训练记录都用最相似的地图单元标记。最后,当将新的测试记录应用于网络时,将检测到最相似的地图单位,并将与检测到的单位具有相同标签的训练数据而不是整个训练数据集输入到网络中。该方案能够显着减小图案层尺寸。通过使用15个基准测试功能和8个不同的UCI数据集对提出的混合模型进行了评估。根据仿真结果,所提出的模型大大简化了GRNN的结构,而没有任何性能损失。

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