Fast fashion sales forecasting with limited data and time
作者:
Highlights:
• This paper develops a hybrid sales forecasting algorithm for fast fashion operations.
• The algorithm can work well with limited time and data.
• Insights on the situations under which the algorithm works especially well are revealed.
• Managerial implications to fast fashion operations are discussed.
• This paper lays the foundation for achieving real time fast fashion forecasting.
摘要
Fast fashion is a commonly adopted strategy in fashion retailing. Under fast fashion, operational decisions have to be made with a tight schedule and the corresponding forecasting method has to be completed with very limited data within a limited time duration. Motivated by fast fashion business practices, in this paper, an intelligent forecasting algorithm, which combines tools such as the extreme learning machine and the grey model, is developed. Our real data analysis demonstrates that this newly derived algorithm can generate reasonably good forecasting under the given time and data constraints. Further analysis with an artificial dataset shows that the proposed algorithm performs especially well when either (i) the demand trend slope is large, or (ii) the seasonal cycle's variance is large. These two features fit the fast fashion demand pattern very well because the trend factor is significant and the seasonal cycle is usually highly variable in fast fashion. The results from this paper lay the foundation which can help to achieve real time sales forecasting for fast fashion operations in the future. Some managerial implications are also discussed.
论文关键词:Fashion forecasting,Fast fashion,Quick forecasting,Time series,Intelligent forecasting
论文评审过程:Received 16 May 2012, Revised 10 October 2013, Accepted 26 October 2013, Available online 2 November 2013.
论文官网地址:https://doi.org/10.1016/j.dss.2013.10.008