使用监督机器学习模型增加COVID-19测试数量的影响

W. Pooja, N. Snehal, K. Sonam, S. Wagh, Navdeep M. Singh
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引用次数: 2

摘要

机器学习在医学领域被广泛应用于疾病诊断和研究。机器学习领域主要分为监督学习、无监督学习和强化学习三部分。本文使用监督机器学习(ML)算法进行建模,并显示增加测试对每日COVID-19确诊病例数量的影响。进行本研究使用的算法是决策树回归和随机森林回归。用于建模的机器学习已被证明对预测和未来行动过程的决策非常重要。本文采用高斯过程回归对韩国每日确诊病例进行建模和预测。结果表明,如果对韩国人口进行检测的数量增加,大约等于51,286,183,则每日病例的高峰将提前出现,因此每日病例总数与目前的病例相比较少。
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Effect of increased number of COVID-19 tests using supervised machine learning models
Machine learning is widely being used in medical field for disease diagnostics and research.The area of machine learning is mainly classified into 3 parts: supervised, unsupervised and reinforcement learning.Supervised machine learning (ML) algorithms are used in this paper for modeling and showing the impact of increased testing on the number of daily confirmed cases of COVID-19. The algorithms used to carry out this study are decision tree regression and random forest regression. Machine learning for modeling has proven to be significant for forecasting and hence decision making over the future course of actions. In this paper, Gaussian process regression has been used for modeling as well as forecasting the daily confirmed cases in South Korea. The results obtained show that if the number of tests conducted is increased to the population of South Korea, approximately equal to 51, 286, 183, the peak in the daily cases is obtained earlier and hence the overall number of daily cases is less compared to current cases.
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