澳大利亚COVID-19数据可视化和预测建模性能分析

Proma T. Ali, Ayesha K. Reddy
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引用次数: 0

摘要

冠状病毒大流行的兴起是出乎意料的,它变成了一个非常严重和灾难性的危险情景,特别是在财务平衡、身心健康、人口增长、社会化和全球化方面。本文考虑澳大利亚从1月25日开始到目前为止的COVID-19数据进行实验研究。主要利用流行的Microsoft Power BI工具和Python编码语言将数据集可视化,并深入了解澳大利亚的COVID-19情况。更具体地说,在本研究中,Python主要用于数据生成可视化和预测模型,以有效地解释正在进行的医疗危险。绘制的图表显著地提取了2020年2月至2021年9月澳大利亚累计感染率的趋势。如此重要的数字数据集的理解允许图形化的理解和数据科学应用的表示。将自回归综合移动平均(ARIMA)模型和长短期记忆(LSTM)模型等统计预测模型应用于澳大利亚COVID-19感染人数的时间序列数据,预测澳大利亚COVID-19病例的未来趋势。最后,我们认为这项研究可以帮助政策制定者和卫生从业者在数据科学技术和应用的帮助下更有效地管理未来的全球医疗问题,这是我们技术时代的核心。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Australian COVID-19 Data Visualisation and Forecast Modelling Performance Analysis
The rise of the Coronavirus pandemic was unanticipated, and it turned into a very serious and catastrophically dangerous scenario especially in terms of financial balance, physical and mental health, population growth, socialization, and globalization. This paper considers Australian COVID-19 data from its beginning on the 25th of January to this date for experimental study. The popular Microsoft Power BI tool and Python coding language were primarily utilized to visualize the data sets and understand the depth of the COVID-19 situation in Australia. More specifically Python is primarily used in this study on the data to generate visualizations and forecasted models for effective interpretation of the ongoing medical peril. The plots and graphs created significantly extract trends for the accumulative infection rates ongoing in Australia from February 2020 to September 2021. Such important comprehensions of the numerical data set allowed for a graphical understanding and representation with data science applications. Statistical forecasting models such as the autoregressive integrated moving average (ARIMA) model and the long short-term memory (LSTM) model were applied to the time series data of Australian COVID-19 infection numbers to predict the future trends of COVID-19 cases in Australia. Finally, we feel this research can help the policymakers and health practitioners to manage such global medical issues more efficiently in the future with the help of data science technology and applications which is the uprising heart of our technological era.
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