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arxiv: 2510.16060 · v2 · pith:Q6LPG6H6new · submitted 2025-10-17 · 💻 cs.LG · cs.AI· stat.ME· stat.ML

Beyond Accuracy: Are Time Series Foundation Models Well-Calibrated?

classification 💻 cs.LG cs.AIstat.MEstat.ML
keywords modelsfoundationseriescalibrationtimeapplicationsover-properties
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The recent development of foundation models for time series data has generated considerable interest in using such models across a variety of applications. Although foundation models achieve state-of-the-art predictive performance, their calibration properties remain relatively underexplored, despite the fact that calibration can be critical for many practical applications. In this paper, we investigate the calibration-related properties of five recent time series foundation models and two competitive baselines. We perform a series of systematic evaluations assessing model calibration (i.e., over- or under-confidence), effects of varying prediction heads, and calibration under long-term autoregressive forecasting. We find that time series foundation models are consistently better calibrated than baseline models and tend not to be either systematically over- or under-confident, in contrast to the overconfidence often seen in other deep learning models.

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