Point forecasts of the price of crude oil: an attempt to “beat” the end-of-month random-walk benchmark

IF 1.9 4区 经济学 Q2 ECONOMICS Empirical Economics Pub Date : 2024-05-03 DOI:10.1007/s00181-024-02599-8
Nima Nonejad
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Abstract

The study of Ellwanger and Snudden (J Bank Financ 154:106962, 2023) discovers a new and remarkable finding regarding the ability of the random-walk model using the end-of-month price of crude oil to forecast future monthly average crude oil prices out-of-sample. The magnitude and nature of the relative predictive gains lead the authors to question whether any other model can “beat” the end-of-month price random-walk out-of-sample. I make an attempt to do so by relying on plain end-of-month crude oil price autoregressive fractionally integrated moving average (ARFIMA) models. These models are more nuanced and at the same time comprehensively account for one of the most salient features of the price of crude oil, namely, its persistence. Consequently, a forecaster is inclined to believe that they might “beat” the end-of-month random-walk model. However, out-of-sample results demonstrate that a uniform (definitive) conclusion cannot be drawn. On the contrary, conclusions depend heavily on the definition of “beating”, i.e. population-level versus finite-sample relative predictability, the forecast horizon, state of the business cycle and the choice of the crude oil price series itself. The decisions, judgments and dilemmas faced by the forecaster are presented and elaborated.

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原油价格点预测:"击败 "月末随机漫步基准的尝试
Ellwanger 和 Snudden 的研究(J Bank Financ 154:106962,2023 年)发现了一个新的惊人发现,即使用原油月末价格的随机漫步模型能够预测未来原油月平均价格的样本外价格。相对预测收益的大小和性质使作者质疑是否有其他模型可以 "击败 "样本外的月末价格随机漫步模型。为此,我尝试使用简单的月末原油价格自回归分部积分移动平均(ARFIMA)模型。这些模型更加细致入微,同时还能全面解释原油价格最显著的特征之一,即其持久性。因此,预测者倾向于认为他们可以 "战胜 "月末随机漫步模型。然而,样本外结果表明,无法得出统一(确定)的结论。相反,结论在很大程度上取决于 "战胜 "的定义,即总体水平与有限样本的相对可预测性、预测期限、商业周期状态以及原油价格系列本身的选择。本文介绍并阐述了预测者面临的决定、判断和困境。
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来源期刊
CiteScore
4.40
自引率
0.00%
发文量
157
期刊介绍: Empirical Economics publishes high quality papers using econometric or statistical methods to fill the gap between economic theory and observed data. Papers explore such topics as estimation of established relationships between economic variables, testing of hypotheses derived from economic theory, treatment effect estimation, policy evaluation, simulation, forecasting, as well as econometric methods and measurement. Empirical Economics emphasizes the replicability of empirical results. Replication studies of important results in the literature - both positive and negative results - may be published as short papers in Empirical Economics. Authors of all accepted papers and replications are required to submit all data and codes prior to publication (for more details, see: Instructions for Authors).The journal follows a single blind review procedure. In order to ensure the high quality of the journal and an efficient editorial process, a substantial number of submissions that have very poor chances of receiving positive reviews are routinely rejected without sending the papers for review.Officially cited as: Empir Econ
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