Exploring the Suitability of Support Vector Regression and Radial Basis Function Approximation to Forecast Sales of Fortune 500 Companies

Vivian M. Evangelista, R. Regis
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Abstract

Machine learning methods have recently gained attention in business applications. We will explore the suitability of machine learning methods, particularly support vector regression (SVR) and radial basis function (RBF) approximation, in forecasting company sales. We compare the one-step-ahead forecast accuracy of these machine learning methods with traditional statistical forecasting techniques such as moving average (MA), exponential smoothing, and linear and quadratic trend regression on quarterly sales data of 43 Fortune 500 companies. Moreover, we implement an additive seasonal adjustment procedure on the quarterly sales data of 28 of the Fortune 500 companies whose time series exhibited seasonality, referred to as the seasonal group. Furthermore, we prove a mathematical property of this seasonal adjustment procedure that is useful in interpreting the resulting time series model. Our results show that the Gaussian form of a moving RBF model, with or without seasonal adjustment, is a promising method for forecasting company sales. In particular, the moving RBF-Gaussian model with seasonal adjustment yields generally better mean absolute percentage error (MAPE) values than the other methods on the sales data of 28 companies in the seasonal group. In addition, it is competitive with single exponential smoothing and better than the other methods on the sales data of the other 15 companies in the non-seasonal group.
探讨支持向量回归和径向基函数逼近在世界500强企业销售预测中的适用性
机器学习方法最近在商业应用中得到了关注。我们将探讨机器学习方法的适用性,特别是支持向量回归(SVR)和径向基函数(RBF)近似,预测公司销售。我们将这些机器学习方法的一步预测精度与传统的统计预测技术(如移动平均线(MA)、指数平滑、线性和二次趋势回归)对43家财富500强公司的季度销售数据进行了比较。此外,我们对28家财富500强公司的季度销售数据实施了一个附加的季节性调整过程,这些公司的时间序列显示出季节性,称为季节性组。此外,我们证明了这个季节调整过程的一个数学性质,这对解释产生的时间序列模型是有用的。我们的结果表明,高斯形式的移动RBF模型,无论是否有季节调整,都是预测公司销售的一种很有前途的方法。特别是,带季节调整的移动rbf -高斯模型对季节组中28家公司的销售数据的平均绝对百分比误差(MAPE)值总体上优于其他方法。此外,该方法与单指数平滑法具有较强的竞争力,对非季节性组中其他15家公司的销售数据的处理效果优于其他方法。
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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