Staying Positive : Challenges and Solutions in Using Pure Multiplicative ETS Models

Svetunkov, Ivan and Boylan, John E (2023) Staying Positive : Challenges and Solutions in Using Pure Multiplicative ETS Models. IMA Journal of Management Mathematics. ISSN 1471-678X

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Abstract

Exponential smoothing in state space form (ETS) is a popular forecasting technique, widely used in research and practice. While the additive error ETS models have been well studied, the multiplicative error ones have received much less attention in forecasting literature. Still, these models can be useful in cases, when one deals with positive data, because they are supposed to work in such situations. Unfortunately, the classical assumption of normality for the error term might break this property and lead to non-positive forecasts on positive data. In order to address this issue we propose using Log-Normal, Gamma and Inverse Gaussian distributions, which are defined for positive values only. We demonstrate what happens with ETS(M,*,*) models in this case, discuss conditional moments of ETS with these distribution and show that they are more natural for the models than the Normal one. We conduct the simulation experiments in order to study the bias introduced by point forecasts in these models and then compare the models with different distributions. We finish the paper with an example of application, showing how pure multiplicative ETS with a positive distribution works.

Item Type:
Journal Article
Journal or Publication Title:
IMA Journal of Management Mathematics
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/1400/1404
Subjects:
?? applied mathematicsmanagement science and operations researchstrategy and managementgeneral economics, econometrics and financemodeling and simulationmanagement information systemsmanagement information systemsstrategy and managementapplied mathematics ??
ID Code:
212310
Deposited By:
Deposited On:
04 Jan 2024 14:55
Refereed?:
Yes
Published?:
Published
Last Modified:
17 Mar 2024 02:20