Our research examines how to integrate human judgment and statistical algorithms for demand planning in an increasingly data-driven and automated environment. We use a laboratory experiment combined with a field study to compare existing integration methods with a novel approach: Human-Guided Learning. This new method allows the algorithm to use human judgment to train a model using an iterative linear weighting of human judgment and model predictions. Human-Guided Learning is more accurate vis-à-vis the established integration methods of Judgmental Adjustment, Quantitative Correction of Human Judgment, Forecast Combination, and Judgment as a Model Input. Human-Guided Learning performs similarly to Integrative Judgment Learning, but under certain circumstances, Human-Guided Learning can be more accurate. Our studies demonstrate that the benefit of human judgment for demand planning processes depends on the integration method.
CITATION STYLE
Brau, R., Aloysius, J., & Siemsen, E. (2023). Demand planning for the digital supply chain: How to integrate human judgment and predictive analytics. Journal of Operations Management, 69(6), 965–982. https://doi.org/10.1002/joom.1257
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