利用随机森林回归可视化和预测Covid-19数据

D. Sumathi, T. Poongodi, P. Suresh, S. Karthikeyan, N. Sree Chand1
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引用次数: 0

摘要

COVID-19疫情已在世界多个地区蔓延。数据池急剧增加,需要各领域研究人员高度重视,分析并确定处理措施。因此,世界各地的研究人员正在研究人工智能(AI),以解决新冠肺炎带来的挑战。可以说,人工智能可以检查大量的数据堆,从而确定一些新的发现。人工智能可以应用于制药行业、疫苗和抗体的分析和开发、药物设计等各个领域。尽管人工智能在最近几年取得了令人印象深刻的进步,但它仍然被证明是技术的基本质量,也是人类创造力的证据,有助于开发具有统计和计算复杂性的工具和产品。据观察,人工智能技术有助于追踪爆发、患者诊断和加快寻找治疗方法的过程。这项工作概述了COVID-19,以及可以在各个部门应用的技术融合,以应对这场大流行。对多种技术和模型进行了广泛的探索,以预测COVID-19。此外,已经部署了许多模型来预测covid状态。据推测,XGBoost在预言中表现出相当大的进步。
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Visualisation and prediction of Covid-19 data using random forest regression
The outbreak of COVID-19 has spread among several parts of the world. The data pool increases tremendously, which needs excellent attention by researchers of various domains to analyze and determine the measures to handle it. Hence, researchers worldwide are looking into Artificial Intelligence (AI) to resolve the challenges due to this COVID-19. It could be stated that AI can examine huge data mounds so that several new findings can be determined. AI could be deployed in various fields, such as the pharmaceutical industry, the analysis and development of vaccines and antibodies, and drug designing. Due to the impressive progress that AI has made in the latest few years, still, it proves to be the essential quality of the technology and evidence of humans' creativity towards the contribution of developing tools and products which could be statistically and computationally complex. It is observed that AI technology aids in tracing the outburst, patient diagnosis and fastening the procedure of finding a treatment. This work provides an overview of COVID-19, along with the convergence of technologies that could be applied in various sections to handle this pandemic. An extensive exploration of multiple techniques and models has been implemented for the prediction of COVID-19 has been done. Additionally, numerous models have been deployed for predictions of covid states. It has been inferred that XGBoost showed considerable progress in the prophecy.
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来源期刊
Journal of Current Science and Technology
Journal of Current Science and Technology Multidisciplinary-Multidisciplinary
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