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Input Vector Normalization Methods in Support Vector Machines for Automatic Incident Detection

机译:支持向量机中用于事件自动检测的输入向量归一化方法

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摘要

It is known that support vector machines (SVMs), based on statistical learning theory, are an efficient approach to solving the pattern recognition problem because of their remarkable performance in terms of prediction accuracy. When applying SVMs, the input vectors should be normalized. The prediction performance would differ according to the normalization method used. Thus, it is important to choose an efficient method for normalizing input vectors as this could improve the prediction performance of the SVMs. In this paper, various normalization methods for input vectors have been studied and the best normalization method proposed to achieve the best performance in automatic incident detection. The experimental results show that the performance of an automatic incident detection system using SVMs can be highly dependent on the method used in normalizing the input vectors, and that the proposed normalization method is the most efficient method for automatic incident detection.
机译:众所周知,基于统计学习理论的支持向量机(SVM)是解决模式识别问题的有效方法,因为它们在预测精度方面具有非凡的性能。应用SVM时,应将输入向量标准化。预测性能将根据使用的归一化方法而有所不同。因此,重要的是选择一种有效的方法来归一化输入矢量,因为这可以提高SVM的预测性能。本文研究了各种针对输入矢量的归一化方法,并提出了最佳归一化方法以实现自动事件检测的最佳性能。实验结果表明,使用支持向量机的自动事件检测系统的性能可能高度依赖于用于对输入矢量进行归一化的方法,并且所提出的归一化方法是用于自动事件检测的最有效方法。

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