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Hybridization of the SGTM Neural-Like Structure Through Inputs Polynomial Extension

机译:通过输入多项式延伸,SGTM神经样结构的杂交

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In this paper, a new approach for increasing the approximation accuracy with the use of computational intelligence tools is described. It is based on the compatible use of the neural-like structure of the Successive Geometric Transformations Model and the inputs polynomial extension. To implement such an extension, second degree Wiener polynomial is used. This combination improves the method accuracy for solving various tasks, such as classification and regression, including short-term and long-term prediction, dynamic pricing, as well as image recognition and image scaling, e-commerce. Due to the use of SGTM neural-like structure, the high speed of the system is maintained in both training and using modes. The simulation of the described approach is carried out on real data, the time results of the neural-like structure work and the accuracy results (MAPE, RMSE, R) are given. A comparison of the operation of the method with existing ones, such as Support vector regression, Classic linear SGTM neural-like structure, Linear regression (using Stochastic Gradient Descent), Random Forest, Multilayer Perceptron, AdaBoost are made. The advantages of the developed approach, in particular with regard to the highest accuracy among existing ones were experimentally established.
机译:在本文中,描述了一种利用计算智能工具来增加近似精度的新方法。基于连续几何变换模型的神经样结构和输入多项式扩展的兼容性。为了实现这样的延伸,使用第二度维纳多项式。这种组合改善了解决各种任务的方法准确性,例如分类和回归,包括短期和长期预测,动态定价以及图像识别和图像缩放电子商务。由于使用SGTM神经状结构,系统的高速保持在训练和使用模式。所描述的方法的仿真在真实数据上进行,给出了神经状结构工作的时间结果和准确度结果(MAPE,RMSE,R)。对现有方法的操作的比较,例如支持向量回归,经典线性SGTM神经状结构,线性回归(使用随机梯度下降),随机森林,多层的Perceptron,Adaboost。特定地建立了开发方法的优点,特别是现有的最高精度。

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