Combined prediction model of merchandise sales on the basis of differential evolution algorithm.
- Resource Type
- Article
- Authors
- Xiao, Zhenghong; Qiu, Moyue; Mei, Yangyang
- Source
- Journal of Computational Methods in Sciences & Engineering. 2019, Vol. 19 Issue 3, p799-809. 11p.
- Subject
- *PREDICTION models
*BACK propagation
*DIFFERENTIAL evolution
*SALES statistics
*COMMERCIAL products
*TIME series analysis
*ALGORITHMS
*SALES
- Language
- ISSN
- 1472-7978
A combined forecasting model of merchandise sales is proposed on the basis of differential evolution algorithm (DEA). Time series forecasting model and back propagation neural network forecasting value are used to construct the combined forecasting model. Forecasting results obtained by two single forecasting methods are set as the inputs of the DEA, whereas actual historical data values are used as the expected outputs of the network on the basis of the principle of minimum sum of squared errors and determine the weights of various forecasting methods. This method is validated on the basis of the actual sales data collected from Haowanjia online and Rossmann stores in Kaggle. The proposed method performs better in terms of forecasting accuracy than the combined forecasting model based on the weight coefficient of reciprocal variance. [ABSTRACT FROM AUTHOR]