cs.AI updates on arXiv.org 07月30日 12:12
Foundation Models for Demand Forecasting via Dual-Strategy Ensembling
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本文提出一种针对现实供应链中销售预测的统一集成框架,通过层次集成和架构集成策略,提高基础模型在复杂环境下的泛化能力,实验结果表明该方法在多个数据集上优于强基线。

arXiv:2507.22053v1 Announce Type: cross Abstract: Accurate demand forecasting is critical for supply chain optimization, yet remains difficult in practice due to hierarchical complexity, domain shifts, and evolving external factors. While recent foundation models offer strong potential for time series forecasting, they often suffer from architectural rigidity and limited robustness under distributional change. In this paper, we propose a unified ensemble framework that enhances the performance of foundation models for sales forecasting in real-world supply chains. Our method combines two complementary strategies: (1) Hierarchical Ensemble (HE), which partitions training and inference by semantic levels (e.g., store, category, department) to capture localized patterns; and (2) Architectural Ensemble (AE), which integrates predictions from diverse model backbones to mitigate bias and improve stability. We conduct extensive experiments on the M5 benchmark and three external sales datasets, covering both in-domain and zero-shot forecasting. Results show that our approach consistently outperforms strong baselines, improves accuracy across hierarchical levels, and provides a simple yet effective mechanism for boosting generalization in complex forecasting environments.

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供应链优化 销售预测 基础模型 集成框架 泛化能力
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