LGMay 27

Stabilizing distribution-free probabilistic forecasts

arXiv:2605.2853122.7
AI Analysis

For practitioners using probabilistic forecasts in decision-making (e.g., inventory management), this work provides a way to control forecast instability, which can reduce costly plan changes and maintain trust.

The paper addresses the trade-off between forecast quality and stability in multi-step-ahead probabilistic time-series forecasting. It proposes a method using regression splines parameterized by a neural network to jointly optimize both, demonstrating on two datasets that it reduces instability without substantial quality loss.

Multi-step-ahead forecasts are often updated as new observations become available, since shorter forecast horizons typically improve forecast quality. However, such improvements come at the cost of forecast instability, i.e., variability in forecasts for the same target period. This instability can trigger costly changes to plans formulated based on the forecasts and may erode trust in the forecasting system. In this work, we integrate forecast stability alongside forecast quality into the training of distribution-free probabilistic time-series forecasting models, allowing us to control this trade-off. We propose a method for generating stabilized forecasted conditional quantile functions using regression splines parameterized by a neural network. This approach enables joint optimization of quality and stability, as it allows us to directly penalize dissimilarities arising from forecast updates. Furthermore, it allows assigning varying importance to stabilizing different parts of the forecast distributions (e.g., central parts vs. tails) to focus on the parts most relevant for the intended downstream use (e.g., the upper tail for inventory management). We empirically evaluate the proposed method on two datasets with different statistical properties and show that it can effectively reduce forecast instability without a substantial loss in forecast quality, and that it can target stabilization effort toward specific parts of the forecast distributions.

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