cs.AI updates on arXiv.org 09月30日 12:04
基于谱相干的预测性评估框架研究
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本文提出一种基于谱相干的预测性评估框架,旨在解决时间序列预测中模型性能与数据不可预测性的混淆问题,提出两种主要贡献:谱相干预测性(SCP)和线性利用比(LUR)。研究发现预测难度随时间变化显著,并揭示了复杂模型在低预测性数据上的优越性。

arXiv:2509.23074v1 Announce Type: cross Abstract: In the era of increasingly complex AI models for time series forecasting, progress is often measured by marginal improvements on benchmark leaderboards. However, this approach suffers from a fundamental flaw: standard evaluation metrics conflate a model's performance with the data's intrinsic unpredictability. To address this pressing challenge, we introduce a novel, predictability-aligned diagnostic framework grounded in spectral coherence. Our framework makes two primary contributions: the Spectral Coherence Predictability (SCP), a computationally efficient ($O(N\log N)$) and task-aligned score that quantifies the inherent difficulty of a given forecasting instance, and the Linear Utilization Ratio (LUR), a frequency-resolved diagnostic tool that precisely measures how effectively a model exploits the linearly predictable information within the data. We validate our framework's effectiveness and leverage it to reveal two core insights. First, we provide the first systematic evidence of "predictability drift", demonstrating that a task's forecasting difficulty varies sharply over time. Second, our evaluation reveals a key architectural trade-off: complex models are superior for low-predictability data, whereas linear models are highly effective on more predictable tasks. We advocate for a paradigm shift, moving beyond simplistic aggregate scores toward a more insightful, predictability-aware evaluation that fosters fairer model comparisons and a deeper understanding of model behavior.

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时间序列预测 谱相干 预测性评估 复杂模型 线性模型
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