首页> 外文期刊>Data in Brief >Application of one-, three-, and seven-day forecasts during early onset on the COVID-19 epidemic dataset using moving average, autoregressive, autoregressive moving average, autoregressive integrated moving average, and na?ve forecasting methods
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Application of one-, three-, and seven-day forecasts during early onset on the COVID-19 epidemic dataset using moving average, autoregressive, autoregressive moving average, autoregressive integrated moving average, and na?ve forecasting methods

机译:在Covid-19流行性数据集早期应用中的一个,三个和七天预报的应用使用搬家平均,自回归,自回归移动平均,自回归综合移动平均线和NA ve预测方法

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The coronavirus disease 2019 (COVID-19) spread rapidly across the world since its appearance in December 2019. This data set creates one-, three-, and seven-day forecasts of the COVID-19 pandemic's cumulative case counts at the county, health district, and state geographic levels for the state of Virginia. Forecasts are created over the first 46 days of reported COVID-19 cases using the cumulative case count data provided byThe New York Timesas of April 22, 2020. From this historical data, one-, three-, seven, and all-days prior to the forecast start date are used to generate the forecasts. Forecasts are created using: (1) a Na?ve approach; (2) Holt-Winters exponential smoothing (HW); (3) growth rate (Growth); (4) moving average (MA); (5) autoregressive (AR); (6) autoregressive moving average (ARMA); and (7) autoregressive integrated moving average (ARIMA). Median Absolute Error (MdAE) and Median Absolute Percentage Error (MdAPE) metrics are created with each forecast to evaluate the forecast with respect to existing historical data. These error metrics are aggregated to provide a means for assessing which combination of forecast method, forecast length, and lookback length are best fits, based on lowest aggregated error at each geographic level.The data set is comprised of an R-Project file, four R source code files, all 1,329,404 generated short-range forecasts, MdAE and MdAPE error metric data for each forecast, copies of the input files, and the generated comparison tables. All code and data files are provided to provide transparency and facilitate replicability and reproducibility. This package opens directly in RStudio through the R Project file. The R Project file removes the need to set path locations for the folders contained within the data set to simplify setup requirements. This data set provides two avenues for reproducing results: 1) Use the provided code to generate the forecasts from scratch and then run the analyses; or 2) Load the saved forecast data and run the analyses on the stored data. Code annotations provide the instructions needed to accomplish both routes.This data can be used to generate the same set of forecasts and error metrics for any US state by altering the state parameter within the source code. Users can also generate health district forecasts for any other state, by providing a file which maps each county within a state to its respective health-district. The source code can be connected to the most up-to-date version ofThe New York TimesCOVID-19 dataset allows for the generation of forecasts up to the most recently reported data to facilitate near real-time forecasting.
机译:2019年(Covid-19)自2019年12月出现以来,冠状病毒疾病2019年区和弗吉尼亚州的国家地理层面。在报告的Covid-19案件的前46天内使用纽约时报22,2020年4月22日纽约时报的案件的第一个46天创建了预测。从这个历史数据,一个,三,七,八个和全天预测开始日期用于生成预测。预测是使用的:(1)一种方法; (2)Holt-Winers指数平滑(HW); (3)增长率(增长); (4)移动平均(MA); (5)归类(AR); (6)自回归移动平均(ARMA); (7)自回归综合移动平均(Arima)。中位绝对错误(MDAE)和中位数绝对百分比误差(MDAPE)指标由每个预测创建,以评估关于现有历史数据的预测。这些错误指标被聚合以提供用于评估预测方法,预测长度和Lookback长度最佳的方法,基于每个地理级别的最低聚合误差。数据集由R-Project文件组成,四个R源代码文件,所有1,329,404生成的短程预测,MDAE和MDAPE误差度量数据,用于每个预测,输入文件的副本和生成的比较表。提供所有代码和数据文件以提供透明度,并促进可重复性和再现性。此包通过R项目文件直接在RStudio中打开。 R Project文件删除了设置数据集中包含的文件夹的路径位置,以简化设置要求。此数据集提供两个用于再现结果的途径:1)使用提供的代码从头开始生成预测,然后运行分析;或2)加载已保存的预测数据并在存储的数据上运行分析。代码注释提供完成两条路由所需的指令。这数据可用于通过在源代码中更改源代码中的状态参数来为任何我们状态生成相同的预测和错误指标。用户还可以通过提供统计各自的卫生区的每个县的文件来为任何其他国家生成任何其他国家的健康区预测。源代码可以连接到New York Timescovid-19数据集的最新版本,允许生成预测最近报告的数据,以方便近实时预测。

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