基于睡眠健康和生活方式数据集的随机森林睡眠障碍分类

Idfian Azhar Hidayat
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引用次数: 0

摘要

本研究旨在使用随机森林方法对睡眠健康和生活方式数据集进行睡眠障碍分类。该数据集包含有关睡眠、生活方式和相关健康因素的信息。在本研究中,数据集被处理并分为训练子集和测试子集。随机森林模型使用具有睡眠和健康相关特征的训练子集进行训练。每个决策树的分裂质量用基尼指数来衡量。使用测试子集对模型进行评估,以衡量其准确性和分类性能。评价结果表明,随机森林模型能够较准确地预测睡眠障碍。对班级分布、特征之间的相关关系以及性别可视化的分析,提供了对影响睡眠障碍因素的见解。这项研究有可能对健康和医学领域做出贡献,特别是在睡眠障碍的识别和诊断方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Sleep Disorders Using Random Forest on Sleep Health and Lifestyle Dataset
This study aims to classify sleep disorders using the Random Forest method on the Sleep Health and Lifestyledataset. This dataset contains information about sleep, lifestyle, and relevant health factors. In this study, thedataset was processed and divided into training and testing subsets. The Random Forest model was trained usingthe training subset with sleep and health related features. The quality of the split in each decision tree wasmeasured using the Gini Index. The model was evaluated using the testing subset to measure its accuracy andclassification performance. The evaluation results showed that the Random Forest model was able to predictsleep disorders with good accuracy. Analysis of class distributions, correlation relationships between features,and visualization by gender provided insights into the factors that influence sleep disorders. This research has thepotential to contribute to the field of health and medicine, especially in the recognition and diagnosis of sleepdisorders.
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