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Pattern analysis: predicting COVID-19 pandemic in India using Auto ML

机译:模式分析:使用 Auto ML 预测印度的 COVID-19 大流行

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PurposeSince December 2019, global attention has been drawn to the rapid spread of COVID-19. Corona was discovered in India on 30 January 2020. To date, in India, 178,014 disease cases were reported with 14,011 deaths by the Indian Government. In the meantime, with an increasing spread speed, the COVID-19 epidemic occurred in other countries. The survival rate for COVID-19 patients who suffer from a critical illness is efficiently and precisely predicted as more fatal cases can be affected in advanced cases. However, over 400 laboratories and clinically relevant survival rates of all present critically ill COVID-19 patients are estimated manually. The manual diagnosis inevitably results in high misdiagnosis and missed diagnosis owing to a lack of experience and prior knowledge. The chapter presents an option for developing a machine-based prognostic model that exactly predicts the survival of individual severe patients with clinical data from different sources such as Kaggle data.gov and World Health Organization with greater than 95 accuracy. The data set and attributes are shown in detail. The reasonableness of such a mere three elements may depend, respectively, on their representativeness in the indices of tissue injury, immunity and inflammation. The purpose of this paper is to provide detailed study from the diagnostic aspect of COVID-19, the work updates the cost-effective and prompt criticality classification and prediction of survival before the targeted intervention and diagnosis, in particular the triage of the vast COVID-19 explosive epidemic.Design/methodology/approachAutomated machine learning (ML) provides resources and platforms to render ML available to non-ML experts, to boost efficiency in ML and to accelerate research in machine learning. H2O AutoML is used to generate the results (Dulhare et al., 2020). ML has achieved major milestones in recent years, and it is on which an increasing range of disciplines depend. But this performance is crucially dependent on specialists in human ML to perform the following tasks: preprocess the info and clean it; choose and create the appropriate apps; choose a family that fits the pattern; optimize hyperparameters for layout; and models of computer learning post processes. Review of the findings collected is important.FindingsThese days, the concept of automated ML techniques is being used in every field and domain, for example, in the stock market, education institutions, medical field, etc. ML tools play an important role in harnessing the massive amount of data. In this paper, the data set relatively holds a huge amount of data, and appropriate analysis and prediction are necessary to track as the numbers of COVID cases are increasing day by day. This prediction of COVID-19 will be able to track the cases particularly in India and might help researchers in the future to develop vaccines. Researchers across the world are testing different medications to cure COVID; however, it is still being tested in various labs. This paper highlights and deploys the concept of AutoML to analyze the data and to find the best algorithm to predict the disease. Appropriate tables, figures and explanations are provided.Originality/valueAs the difficulty of such activities frequently goes beyond non-ML-experts, the exponential growth of ML implementations has generated a market for off-the-shelf ML solutions that can be used quickly and without experience. We name the resulting work field which is oriented toward the radical automation of AutoML machine learning.The third class is that of the individuals who have illnesses such as diabetes, high BP, asthma, malignant growth, cardiovascular sickness and so forth. As their safe frameworks have been undermined effectively because of a common ailment, these individuals become obvious objectives. Diseases experienced by the third classification of individuals can be lethal (Shinde et al., 2020). Examining information is fundamental in having
机译:目的自 2019 年 12 月以来,全球关注 COVID-19 的快速传播。电晕于2020年1月30日在印度被发现。迄今为止,印度政府报告了178,014例疾病病例,其中14,011例死亡。与此同时,随着传播速度的加快,COVID-19 疫情在其他国家发生。可以有效且准确地预测患有危重疾病的 COVID-19 患者的存活率,因为晚期病例可能会影响更多致命病例。然而,超过 400 个实验室和所有现有危重 COVID-19 患者的临床相关生存率是手动估计的。由于缺乏经验和先验知识,手动诊断不可避免地会导致高度误诊和漏诊。本章提出了一种开发基于机器的预后模型的选项,该模型使用来自不同来源(如 Kaggle data.gov 和世界卫生组织)的临床数据准确预测个体重症患者的生存率,准确率超过 95%。详细显示了数据集和属性。这仅仅三个要素的合理性可能分别取决于它们在组织损伤、免疫和炎症指数中的代表性。本文的目的是从 COVID-19 的诊断方面提供详细的研究,这项工作更新了在有针对性的干预和诊断之前具有成本效益和及时的临界性分类和生存预测,特别是对庞大的 COVID-19 爆炸性 epidemic.Design/methodology/approachAutomated 机器学习 (ML) 的分类提供了资源和平台,使 ML 可供非 ML 专家使用, 提高机器学习的效率并加速机器学习的研究。H2O AutoML用于生成结果(Dulhare等人,2020)。近年来,机器学习取得了重要的里程碑,越来越多的学科都依赖于它。但这种性能在很大程度上取决于人类机器学习专家来执行以下任务:预处理信息并清理信息;选择并创建适当的应用程序;选择适合模式的系列;优化布局的超参数;以及计算机学习后期处理的模型。对所收集结果的审查很重要。研究结果如今,自动化机器学习技术的概念正被用于各个领域和领域,例如股票市场、教育机构、医疗领域等。在本文中,数据集相对拥有大量数据,随着 COVID 病例数的日益增加,需要进行适当的分析和预测进行跟踪。这种对 COVID-19 的预测将能够追踪病例,尤其是在印度,并可能帮助研究人员在未来开发疫苗。世界各地的研究人员正在测试不同的药物来治愈 COVID;但是,它仍在各个实验室进行测试。本文重点介绍并部署了 AutoML 的概念来分析数据并找到预测疾病的最佳算法。提供了适当的表格、图表和解释。原创性/价值由于此类活动的难度往往超出了非 ML 专家的范围,因此 ML 实现的指数级增长为现成的 ML 解决方案创造了一个市场,这些解决方案可以在没有经验的情况下快速使用。我们将由此产生的工作领域命名为面向 AutoML 机器学习的激进自动化。第三类是患有糖尿病、高血压、哮喘、恶性生长、心血管疾病等疾病的人。由于他们的安全框架由于一种共同的疾病而受到有效破坏,这些人成为明显的目标。第三类个体所经历的疾病可能是致命的(Shinde 等人,2020 年)。检查信息是拥有

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