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Obesity Level Estimation based on Machine Learning Methods and Artificial Neural Networks

机译:基于机器学习方法和人工神经网络的肥胖水平估计

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摘要

Obesity is a growing societal and public health problem starting from 1980 that needs more attention. For this reason, new studies are emerging day by day, including those looking for obesity in children, especially the impact factors, and how to predict the emergence of the situation under these factors. In this study, different classification methods were applied for the estimation of obesity levels. Based on the evaluation criteria, the results were compared for different machine learning methods. When the Cubic SVM method was applied by selecting the appropriate features specific to the problem, 97.8% accuracy was obtained.
机译:肥胖是从1980年开始的越来越大的社会和公共卫生问题,需要更多关注。 出于这个原因,新的研究日复一日地是新的,包括寻找儿童肥胖的人,特别是影响因素,以及如何预测这些因素下的情况的出现。 在本研究中,应用了不同的分类方法来估计肥胖水平。 基于评估标准,将结果与不同的机器学习方法进行比较。 通过选择特定于问题的适当特征来应用立方SVM方法,获得了97.8%的精度。

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