Predictably Unpredictable? How Judgmental and Machine Learning Forecasts Complement Each Other
成果类型:
Article
署名作者:
Nair, Devadrita; Huchzermeier, Arnd
署名单位:
WHU - Otto Beisheim School of Management; Massachusetts Institute of Technology (MIT)
刊物名称:
PRODUCTION AND OPERATIONS MANAGEMENT
ISSN/ISSBN:
1059-1478
DOI:
10.1177/10591478241245138
发表日期:
2024
页码:
1214-1234
关键词:
Judgmental demand forecasting
Machine Learning
E-commerce
clickstream data
Google Trends
摘要:
Demand forecasting for seasonal products becomes especially challenging in the case of fast innovations, where the product portfolio is upgraded every season. In addition to the problem of forecasting demand without any historical data, companies also have to deal with frequent stockouts, which bias past sales and provide an unreliable anchor for making new forecasts. We show how one can use machine learning models to leverage information on comparable products from the past together with experts' forecasts to improve forecasting accuracy. A machine learning forecast using only statistical features results in a forecast error reduction of 24%, measured by weighted mean absolute percentage error, compared to a purely judgmental prediction on data from Canyon Bicycles. Better yet, an integrated human-machine forecast leads to a further 14% reduction in forecast error, indicating that experts' predictions remain essential for forecasting demand for rapidly innovating seasonal products. The combination of the experts' knowledge of the future and the machine learning algorithms' ability to leverage historical information works best in this setting.
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