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Genetic algorithm based on support vector machines for computer vision syndrome classification in health personnel

机译:基于支持向量机的遗传算法,用于卫生人才计算机视觉综合征分类

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摘要

The inclusion in workplaces of video display terminals has brought multiple benefits for the organization of work. Nevertheless, it also implies a series of risks for the health of the workers, since it can cause ocular and visual disorders, among others. In this research, a group of eye and vision-related problems associated with prolonged computer use (known as computer vision syndrome) are studied. The aim is to select the characteristics of the subject that are most relevant for the occurrence of this syndrome, and then, to develop a classification model for its prediction. The estimate of this problem is made by means of support vector machines for classification. This machine learning technique will be trained with the support of a genetic algorithm. This provides the training of the support vector machine with different patterns of parameters, improving its performance. The model performance is verified in terms of the area under the ROC curve, which leads to a model with high accuracy in the classification of the syndrome.
机译:包含在视频显示终端的工作场所为工作组织带来了多种益处。尽管如此,它也意味着一系列适合工人的健康风险,因为它可能导致眼镜和视觉障碍等。在本研究中,研究了与长时间计算机使用(称为计算机视觉综合征)相关的一组眼睛和视觉相关问题。目的是选择对该综合征发生最相关的主题的特征,然后开发其预测的分类模型。通过支持向量机进行该问题的估计是用于分类的支持。该机器学习技术将通过支持遗传算法培训。这提供了具有不同参数模式的支持向量机的训练,提高其性能。在ROC曲线下的区域方面验证了模型性能,这导致综合征分类高精度的模型。

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