Forecasting with Excel.

Victor Grech
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Abstract

Introduction: Time series analysis is used by statisticians to make predictions from time-ordered data. This is crucial for planning for the future. The inclusion of little-known forecasting function in Excel™ has brought this type of analysis within the ability of less mathematically sophisticated individuals, including doctors. There are two main models for time series analysis: ARIMA (Autoregressive Integrated Moving Average) and exponential smoothing. This paper will demonstrate how the ubiquitous Excel facilitates a little-known sophisticated forecasting technique that employs the latter and presents a facilitating spreadsheet.

Methods: Excel's FORECAST.ETS function was invoked with supporting macros.

Results: A bespoke spreadsheet was created that would prompt for data to be pasted in columns A and B, formatted as a valid date in A and data in B. After error trapping and a horizon date, the FORECAST.ETS function calculates forecasts with 95% CI and a line graph. The FORECAST.ETS.CONFINT was also invoked using a macro to obtain a 95, 96, 97, 98 and 99% confidence intervals table.

Discussion: Forecasting is vital in all fields, including the medical field, for innumerable reasons. Statisticians are capable of far more sophisticated time series analyses and techniques and may use multiple techniques that are beyond the competence of ordinary clinicians. However, the sophisticated Excel tool described in this paper allows simple forecasting by anyone with some knowledge of this ubiquitous software. It is hoped that the spreadsheet included with this paper helps to encourage colleagues to engage with this simple-to-use Excel function.

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使用Excel进行预测。
时间序列分析是统计学家用来从时序数据中做出预测的方法。这对规划未来至关重要。在Excel™中包含鲜为人知的预测功能,使这种类型的分析在数学上不太复杂的个人(包括医生)的能力范围内。有两种主要的时间序列分析模型:ARIMA(自回归综合移动平均)和指数平滑。本文将展示无处不在的Excel如何促进一种鲜为人知的复杂预测技术,该技术采用后者,并提供一种便利的电子表格。方法:Excel预测。使用支持的宏调用了ETS函数。结果:创建了一个定制的电子表格,提示将数据粘贴到A列和B列,格式为A中的有效日期和B中的数据。在错误捕获和地平线日期之后,即FORECAST。ETS功能以95% CI和线形图计算预测。还使用宏调用forecast . ets . contt以获得95、96、97、98和99%置信区间表。讨论:由于无数的原因,预测在包括医学领域在内的所有领域都是至关重要的。统计学家有能力进行更复杂的时间序列分析和技术,并可能使用超出普通临床医生能力的多种技术。然而,本文中描述的复杂的Excel工具允许任何人对这个无处不在的软件有一些了解就可以进行简单的预测。希望本文中包含的电子表格有助于鼓励同事使用这个简单易用的Excel功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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