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一种基于草皮的特征选择技术,用于预测大流行期间影响人类健康的因素。

A Turf-Based Feature Selection Technique for Predicting Factors Affecting Human Health during Pandemic.

作者信息

Saeed Alqahtani, Zaffar Maryam, Abbas Mohammed Ali, Quraishi Khurrum Shehzad, Shahrose Abdullah, Irfan Muhammad, Huneif Mohammed Ayed, Abdulwahab Alqahtani, Alduraibi Sharifa Khalid, Alshehri Fahad, Alduraibi Alaa Khalid, Almushayti Ziyad

机构信息

Department of Surgery, Faculty of Medicine, Najran University, Najran 61441, Saudi Arabia.

Faculty of Computer Sciences, IBADAT International University, Islamabad 44000, Pakistan.

出版信息

Life (Basel). 2022 Sep 1;12(9):1367. doi: 10.3390/life12091367.

Abstract

Worldwide, COVID-19 is a highly contagious epidemic that has affected various fields. Using Artificial Intelligence (AI) and particular feature selection approaches, this study evaluates the aspects affecting the health of students throughout the COVID-19 lockdown time. The research presented in this paper plays a vital role in indicating the factor affecting the health of students during the lockdown in the COVID-19 pandemic. The research presented in this article investigates COVID-19's impact on student health using feature selections. The Filter feature selection technique is used in the presented work to statistically analyze all the features in the dataset, and for better accuracy. ReliefF (TuRF) filter feature selection is tuned and utilized in such a way that it helps to identify the factors affecting students' health from a benchmark dataset of students studying during COVID-19. Random Forest (RF), Gradient Boosted Decision Trees (GBDT), Support Vector Machine (SVM), and 2- layer Neural Network (NN), helps in identifying the most critical indicators for rapid intervention. Results of the approach presented in the paper identified that the students who maintained their weight and kept themselves busy in health activities in the pandemic, such student's remained healthy through this pandemic and study from home in a positive manner. The results suggest that the 2- layer NN machine-learning algorithm showed better accuracy (90%) to predict the factors affecting on health issues of students during COVID-19 lockdown time.

摘要

在全球范围内,新冠疫情是一种极具传染性的流行病,已影响到各个领域。本研究利用人工智能(AI)和特定的特征选择方法,评估了在新冠疫情封锁期间影响学生健康的各个方面。本文所呈现的研究对于指出新冠疫情大流行封锁期间影响学生健康的因素起着至关重要的作用。本文所呈现的研究使用特征选择方法调查了新冠疫情对学生健康的影响。在本研究中使用了过滤特征选择技术对数据集中的所有特征进行统计分析,以提高准确性。对ReliefF(TuRF)过滤特征选择进行了调整和利用,以便从新冠疫情期间学习的学生基准数据集中识别影响学生健康的因素。随机森林(RF)、梯度提升决策树(GBDT)、支持向量机(SVM)和两层神经网络(NN)有助于识别进行快速干预的最关键指标。本文所提出方法的结果表明,在疫情期间保持体重并积极参与健康活动的学生,能够以积极的方式在家学习并在整个疫情期间保持健康。结果表明,两层神经网络机器学习算法在预测新冠疫情封锁期间影响学生健康问题的因素方面表现出更高的准确性(达90%)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7ef3/9502730/f95ffb32f053/life-12-01367-g001.jpg

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