基于支持向量机的边缘智能数据处理方法

Namgyu Jung, Junho Yoon, Vially Kazadi Mutombo, Seungyeon Lee, Jusuk Lee, Chang-Hyun Choi
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引用次数: 1

摘要

最近,边缘智能正在兴起。它被广泛使用,因为它允许你通过边缘智能使商业模式更高效,但仍然缺乏用于边缘智能的模型。人工神经网络解决了人工神经网络的缺点——过拟合问题,并通过提高GPU的性能提高了运算速度,因此得到了广泛的应用。然而,随着需要学习的自变量的增加,人工神经网络的学习时间和特征变慢,神经网络的规模变得非常大。这些人工神经网络的不足使得在现实生活中很难做出用于分类或预测的边缘智能。使用重型神经网络和高性能gpu制造轻量级模型也会带来很多财务问题。然而,基于统计数学的SVM存在于机器学习之间。虽然相对逊色于人工智能,但它更轻,性能稳定。为此,我们提出了一种高效的数据处理方法,提高支持向量机的特性(SVM的整体性能、精度和学习速度),使支持向量机更容易学习数据。当采用四种数据处理方式时,虹膜数据集的准确率提高了0.4%以上,其他数据集的准确率平均提高了2%,并且所有数据集的训练时间也都减少了。因此,能够有效处理数据的支持向量机比人工神经网络轻得多,并且具有非常好的训练时间和准确性。因此,本文提出了一种基于支持向量机的边缘智能数据处理方法。
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Efficient data processing method for edge intelligence based on SVM
Recently, edge intelligence is emerging. It is widely used because it allows you to make business models more efficient through edge intelligence, but there is still a lack of models to use for edge intelligence. Artificial neural networks are being used a lot because they solve the problem of overfitting, which is a disadvantage of artificial neural networks and increase the speed by improving GPU performance. However as the independent variable to be learned increases, the learning time and characteristics of the artificial neural network slow down and the size of the neural network becomes very heavier. The shortage of these artificial neural networks make it difficult to make edge intelligence for classification or prediction in real life. Manufacturing lightweight models using heavy neural networks and high-performance GPUs also presents a lot of financial problems. However, SVM based on statistical mathematics exists between machine learning. Although it is relatively inferior to artificial intelligence, it is better light and has stable performing. To do this, we propose an efficient data processing method that improves the characteristics of the SVM (the overall performance, accuracy and learning speed of the SVM) and makes it easier for the SVM to learn the data. When four types of data processing were applied, the accuracy increased by more than 0.4% for the iris data set and 2% on average for the other data sets, and the training time for all data sets was also reduced. As a result, SVMs that can process data efficiently are much lighter than artificial neural networks and have very good training times versus accuracy. Therefore, in this paper, we propose an efficient data processing method based on SVM for edge intelligence.
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