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Comparing performances of neural network models built through transformed and original data

机译:比较通过转换后的原始数据构建的神经网络模型的性能

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Data transformation (normalization) is a method used in data preprocessing to scale the range of values in the data within a uniform scale to improve the quality of the data; as a result, the prediction accuracy is improved. However, some scholars have questioned the efficacy of data normalization, arguing that it can destroy the structure in the original (raw) data. To address these arguments, we compared the prediction performances of the two methods in the domain of crude oil prices due to its global significance. It was found that the multilayer perceptron neural network model that was built using normalized data significantly outperformed the multilayer perceptron neural network that was built using raw data. The number of iterations and the computation time for both of the methods were statistically equal as well as for the regression. In view of the arguments in the literature about data standardization, the results of this research could allow researchers in the domain of crude oil price prediction to choose the best opinion.
机译:数据转换(标准化)是一种用于数据预处理的方法,用于以统一的比例尺缩放数据中的值范围,以提高数据质量;结果,提高了预测精度。但是,一些学者质疑数据规范化的功效,认为它会破坏原始(原始)数据中的结构。为了解决这些争论,由于其全球意义,我们在原油价格领域比较了这两种方法的预测性能。发现使用规范化数据构建的多层感知器神经网络模型明显优于使用原始数据构建的多层感知器神经网络模型。两种方法的迭代次数和计算时间在统计上以及在回归上均相等。鉴于文献中有关数据标准化的争论,这项研究的结果可以使原油价格预测领域的研究人员选择最佳意见。

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