A hybrid statistical genetic-based demand forecasting expert system

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摘要

Demand forecasting is considered a key factor for balancing risk of over-stocking and out-of-stock. It is the main input to supply chain processes affecting their performance. Even with much effort and funds spent to improve supply chain processes, they still lack reliability and efficiency if the demand forecast accuracy is poor. This paper presents a proposal of an integrated model of statistical methods and improved genetic algorithm to generate better demand forecast accuracy. An improved genetic algorithm is used to choose the best weights among the statistical methods and to optimize the forecasted activities combinations that maximize profit. A case study is presented using different product types. And, a comparison is conducted between results obtained from the proposed model and from traditional statistical methods, which demonstrates improved forecast accuracy using the proposed model for all time series types.

论文关键词:AD,Advertising,AV,Availability,BAFI,Baseline and activities forecast integration,CM,commission,CPS,cleaned promoted series,CRS,cleaned regular series,CS,cost series,DF,demand factors,DS,demand series,FMCG,fast moving consumer goods,GA,genetic algorithm,KPI,key performance indicator,MSE,mean square error,PP,product price,PS,promoted series,RFM,regular factors matrix,RS,regular series,SES,simple exponential smoothing,SP,setup parameters,T,temperature,WD,# working days,Forecasting techniques,Statistical methods,Decision support,Genetic algorithm,Regression methods

论文评审过程:Available online 18 March 2009.

论文官网地址:https://doi.org/10.1016/j.eswa.2009.03.014