A forecasting method of multi-category product sales: analysis and application

被引:0
|
作者
Jing Wang
Ling Luo
机构
[1] Wuchang Institute of Technology,College of Information Engineering
[2] Wuhan University of Technology,School of Management
[3] Wuhan University,School of Civil Engineering
来源
关键词
Category feature; Multi-category product; Forecasting method; Retail industry;
D O I
10.1007/s44176-023-00012-9
中图分类号
学科分类号
摘要
To solve the problems of high prediction costs and difficult practices in multi-category product classification in the retail industry, optimize the inventory, and improve resilience, this work introduces a forecasting method for multi-category product sales. The forecasting method divides the data into a category set and a numerical set, uses the stacking strategy, and combines it with catboost, decision tree, and extreme gradient boosting. During the feature engineering process, the ratio and classification features are added to the category feature set; the sales at t are used for training to obtain the prediction at (t + 1); and the features used in the prediction at time (t + 1) are generated by the prediction results at t. The update processes of the two sets are combined to form a joint feature update mechanism, and multiple features of k categories are jointly updated. Using this method, data of all categories of retail stores can be linked so that historical data of different categories of goods can provide support for the prediction of each category of goods and solve the problem of insufficient product data and features. The method is verified on the retail sales data obtained from the Kaggle platform, and the mean absolute error and weighted mean absolute percentage error are adopted to analyze the performance of the model. The results reveal that the forecasting method can provide a useful reference to decision-makers.
引用
收藏
相关论文
共 50 条
  • [21] Forecasting sales for a B2B product category: case of auto component product
    Lackman, Conway L.
    JOURNAL OF BUSINESS & INDUSTRIAL MARKETING, 2007, 22 (4-5) : 228 - 235
  • [22] Performance advantage of combined classifiers in multi-category cases: An analysis
    Song, X
    Pavel, M
    NEURAL INFORMATION PROCESSING, 2004, 3316 : 750 - 757
  • [23] Reliability of multi-category rating scales
    Parker, Richard I.
    Vannest, Kimberly J.
    Davis, John L.
    JOURNAL OF SCHOOL PSYCHOLOGY, 2013, 51 (02) : 217 - 229
  • [24] Decision application mechanism of regression analysis of multi-category learning behaviors in interactive learning environment
    Xia, Xiaona
    INTERACTIVE LEARNING ENVIRONMENTS, 2023, 31 (05) : 3042 - 3054
  • [25] Subsampling oriented active learning method for multi-category classification problem
    Shi W.
    Huang H.
    Feng Y.
    Liu Z.
    Xi Tong Gong Cheng Yu Dian Zi Ji Shu/Systems Engineering and Electronics, 2021, 43 (03): : 700 - 708
  • [26] Semi-Supervised Method for Multi-Category Emotion Recognition in Tweets
    Sintsova, Valentina
    Musat, Claudiu
    Pu, Pearl
    2014 IEEE INTERNATIONAL CONFERENCE ON DATA MINING WORKSHOP (ICDMW), 2014, : 393 - 402
  • [27] Models of multi-category choice behavior
    Seetharaman, PB
    Chib, S
    Ainslie, A
    Boatwright, P
    Chan, T
    Gupta, S
    Mehta, N
    Rao, V
    Strijnev, A
    MARKETING LETTERS, 2005, 16 (3-4) : 239 - 254
  • [28] Multi-category classifiers and sample width
    Anthony, Martin
    Ratsaby, Joel
    JOURNAL OF COMPUTER AND SYSTEM SCIENCES, 2016, 82 (08) : 1223 - 1231
  • [29] A multi-category intelligent method for the evaluation of visual comfort in underground space
    Zhou, Biao
    Gui, Yingbin
    Xie, Xiongyao
    Li, Wensheng
    Li, Qing
    TUNNELLING AND UNDERGROUND SPACE TECHNOLOGY, 2022, 124
  • [30] Dystemo: Distant Supervision Method for Multi-Category Emotion Recognition in Tweets
    Sintsova, Valentina
    Pu, Pearl
    ACM TRANSACTIONS ON INTELLIGENT SYSTEMS AND TECHNOLOGY, 2016, 8 (01)