Performance Comparison of New Adjusted Min-Max with Decimal Scaling and Statistical Column Normalization Methods for Artificial Neural Network Classification

Saichon Sinsomboonthong
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引用次数: 12

Abstract

In this research, the normalization performance of the proposed adjusted min-max methods was compared to the normalization performance of statistical column, decimal scaling, adjusted decimal scaling, and min-max methods, in terms of accuracy and mean square error of the final classification outcomes. The evaluation process employed an artificial neural network classification on a large variety of widely used datasets. The best method was min-max normalization, providing 84.0187% average ranking of accuracy and 0.1097 average ranking of mean square error across all six datasets. However, the proposed adjusted-2 min-max normalization achieved a higher accuracy and a lower mean square error than min-max normalization on each of the following datasets: white wine quality, Pima Indians diabetes, vertical column, and Indian liver disease datasets. For example, the proposed adjusted-2 min-max normalization on white wine quality dataset achieved 100% accuracy and 0.00000282 mean square error. To conclude, for some classification applications on one of these specific datasets, the proposed adjusted-2 min-max normalization should be used over the other tested normalization methods because it performed better.
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基于十进位缩放和统计列归一化的神经网络分类方法的性能比较
在本研究中,将所提出的调整后的min-max方法的归一化性能与统计列法、十进制标度法、调整后的十进制标度法和min-max方法的归一化性能在最终分类结果的准确率和均方误差方面进行了比较。评估过程采用人工神经网络分类对各种广泛使用的数据集。最佳归一化方法为最小-最大归一化,6个数据集的平均准确率排名为84.0187%,均方误差平均排名为0.1097。然而,所提出的调整后的-2 min-max归一化在以下数据集上比min-max归一化具有更高的精度和更低的均方误差:白葡萄酒质量、皮马印第安人糖尿病、垂直柱和印度肝病数据集。以白酒质量数据集为例,本文提出的调整-2 min-max归一化方法准确率为100%,均方误差为0.00000282。总而言之,对于这些特定数据集上的一些分类应用,建议的调整后的-2最小-最大归一化应该比其他经过测试的归一化方法使用,因为它的性能更好。
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