Demand Forecasting Approaches Based on Associated Relationships for Multiple Products

被引:3
作者
Lei, Ming [1 ]
Li, Shalang [2 ]
Yu, Shasha [1 ]
机构
[1] Peking Univ, Guanghua Sch Management, Beijing 100871, Peoples R China
[2] Penghua Fund Management Co Ltd, Shenzhen 518048, Peoples R China
关键词
demand forecasting; multiple products; granger causality; correlation; inventory performance; DYNAMIC FACTOR MODEL; TIME; MACHINE; IMPACT; PERFORMANCE; ESTIMATORS; COINCIDENT; COMPONENTS; ARIMA;
D O I
10.3390/e21100974
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
As product variety is an important feature for modern enterprises, multi-product demand forecasting is essential to support order decision-making and inventory management. However, these well-established forecasting approaches for multi-dimensional time series, such as Vector Autoregression (VAR) or dynamic factor model (DFM), all cannot deal very well with time series with high or ultra-high dimensionality, especially when the time series are short. Considering that besides the demand trends in historical data, that of associated products (including highly correlated ones or ones having significantly causality) can also provide rich information for prediction, we propose new forecasting approaches for multiple products in this study. The demand of associated products is treated as predictors to add in AR model to improve its prediction accuracy. If there are many time series associated with the object, we introduce two schemes to simplify variables to avoid over-fitting. Then procurement data from a grid company in China is applied to test forecasting performance of the proposed approaches. The empirical results reveal that compared with four conventional models, namely single exponential smoothing (SES), autoregression (AR), VAR and DFM respectively, the new approaches perform better in terms of forecasting errors and inventory simulation performance. They can provide more effective guidance for actual operational activities.
引用
收藏
页数:19
相关论文
共 59 条
[1]   An Empirical Comparison of Machine Learning Models for Time Series Forecasting [J].
Ahmed, Nesreen K. ;
Atiya, Amir F. ;
El Gayar, Neamat ;
El-Shishiny, Hisham .
ECONOMETRIC REVIEWS, 2010, 29 (5-6) :594-621
[2]  
[Anonymous], 1977, Latent Variables in Socio-Economic Models
[3]   BVAR FORECASTS FOR THE G-7 [J].
ARTIS, MJ ;
ZHANG, W .
INTERNATIONAL JOURNAL OF FORECASTING, 1990, 6 (03) :349-362
[4]   ON THE RELATIVE WORTH OF RECENT MACROECONOMIC FORECASTS [J].
ASHLEY, R .
INTERNATIONAL JOURNAL OF FORECASTING, 1988, 4 (03) :363-376
[5]   Impact of temporal aggregation on stock control performance of intermittent demand estimators: Empirical analysis [J].
Babai, M. Zied ;
Ali, Mohammad M. ;
Nikolopoulos, Konstantinos .
OMEGA-INTERNATIONAL JOURNAL OF MANAGEMENT SCIENCE, 2012, 40 (06) :713-721
[6]   Inferential theory for factor models of large dimensions. [J].
Bai, J .
ECONOMETRICA, 2003, 71 (01) :135-171
[7]   Are more data always better for factor analysis? [J].
Boivin, Jean ;
Ng, Serena .
JOURNAL OF ECONOMETRICS, 2006, 132 (01) :169-194
[8]   Forecasting economic activity with mixed frequency BVARs [J].
Brave, Scott A. ;
Butters, R. Andrew ;
Justiniano, Alejandro .
INTERNATIONAL JOURNAL OF FORECASTING, 2019, 35 (04) :1692-1707
[9]  
Brillinger D., 1981, Time Series, Data Analysis and Theory
[10]  
Cepni O., 2018, J FORECASTING, V1, P1, DOI [10.2139/ssrn.3298924, DOI 10.2139/SSRN.3298924]