Analyzing COVID-19 Dataset through Data Mining Tool “Orange”

Uzma Thange, V. Shukla, Ritu Punhani, W. Grobbelaar
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引用次数: 4

Abstract

Data mining is comprehended as a procedure used to get important data from any more extensive cluster of raw data. It infers assessment of data designs in huge data sets utilizing at least one or more applications. Data mining has applications in various fields, for instance science and research. Associations can improve client connections as a use of data mining and execute systems identified with different business capacities and thus upgrade business in an increasingly ideal and compelling way. This encourages organizations draw nearer to arriving at their objectives and to settle on smarter decisions as well. Orange is segment based visual programming for data mining, Artificial Intelligence, and data examination. Work forms are made by interfacing predefined or customer organized parts called widgets. They read the data, process it, envision it, and do gathering, collect prescient models, and so on. Towards the start of December 2019, an erupt of coronavirus contamination 2019 (COVID-19), brought by a new critical intense respiratory issue coronavirus 2 transpired in Wuhan City, Hubei Province, China. On January 30, 2020 the World Health Organization announced the scene as a Public Health Emergency of International Concern. Several episodes forecast models for COVID-19 are being utilized by authorities internationally to settle on instructed decisions and authorize applicable precaution measures. Amidst the standard models for COVID-19 worldwide pandemic expectation, basic epidemiological and authentic models have gotten more consideration by specialists, and they are notable in the media. In this paper, we have taken COVID-19 dataset (downloaded June 2020) from Kaggle, related to India, and with the help of ORANGE tool we have visually represented to understand how certain relations can be depicted.
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利用数据挖掘工具“Orange”分析COVID-19数据集
数据挖掘可以理解为从大量原始数据中获取重要数据的过程。它在使用至少一个或多个应用程序的大型数据集中推断数据设计的评估。数据挖掘在许多领域都有应用,例如科学和研究。通过使用数据挖掘,关联可以改善客户端连接,并执行具有不同业务能力的系统,从而以一种日益理想和引人注目的方式升级业务。这鼓励组织更接近他们的目标,并做出更明智的决定。Orange是基于分段的可视化编程,用于数据挖掘、人工智能和数据检查。工作表单是通过连接预定义的或客户组织的部件(称为小部件)而生成的。他们读取数据,处理数据,设想数据,收集数据,收集有先见之明的模型,等等。2019年12月初,中国湖北省武汉市爆发了由新型严重呼吸道疾病冠状病毒2型引发的2019年冠状病毒污染(COVID-19)疫情。2020年1月30日,世界卫生组织宣布这一场景为国际关注的突发公共卫生事件。国际当局正在利用COVID-19的几个事件预测模型来做出指示决定并批准适用的预防措施。在COVID-19全球大流行预期的标准模型中,流行病学基础模型和真实模型得到了专家的更多关注,并在媒体上得到了关注。在本文中,我们从与印度相关的Kaggle获取了COVID-19数据集(下载于2020年6月),并在ORANGE工具的帮助下,我们直观地表示了如何描述某些关系。
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