Measuring Time Series Forecast Stability for Demand Planning
Steven Klee, Yuntian Xia

TL;DR
This paper emphasizes the importance of forecast stability in demand planning, analyzing how state-of-the-art models perform in terms of variance and proposing the need for further research on stability in production environments.
Contribution
It introduces a study measuring forecast stability alongside accuracy for advanced models and highlights the benefits of ensemble models in improving stability without sacrificing accuracy.
Findings
Ensemble models enhance forecast stability.
Forecast accuracy remains stable or improves with ensembles.
Stability is a crucial aspect for production deployment.
Abstract
Time series forecasting is a critical first step in generating demand plans for supply chains. Experiments on time series models typically focus on demonstrating improvements in forecast accuracy over existing/baseline solutions, quantified according to some accuracy metric. There is no doubt that forecast accuracy is important; however in production systems, demand planners often value consistency and stability over incremental accuracy improvements. Assuming that the inputs have not changed significantly, forecasts that vary drastically from one planning cycle to the next require high amounts of human intervention, which frustrates demand planners and can even cause them to lose trust in ML forecasting models. We study model-induced stochasticity, which quantifies the variance of a set of forecasts produced by a single model when the set of inputs is fixed. Models with lower variance…
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