cs.AI updates on arXiv.org 10月14日 12:18
数据变化驱动资源预测模型重训练策略
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本文研究基于数据变化检测对时间序列资源预测模型进行重训练的效果,与周期性重训练相比,发现基于数据漂移的重训练在多数情况下能实现与周期性重训练相当的预测精度,是一种成本效益高的策略。

arXiv:2510.10320v1 Announce Type: cross Abstract: Capacity management is critical for software organizations to allocate resources effectively and meet operational demands. An important step in capacity management is predicting future resource needs often relies on data-driven analytics and machine learning (ML) forecasting models, which require frequent retraining to stay relevant as data evolves. Continuously retraining the forecasting models can be expensive and difficult to scale, posing a challenge for engineering teams tasked with balancing accuracy and efficiency. Retraining only when the data changes appears to be a more computationally efficient alternative, but its impact on accuracy requires further investigation. In this work, we investigate the effects of retraining capacity forecasting models for time series based on detected changes in the data compared to periodic retraining. Our results show that drift-based retraining achieves comparable forecasting accuracy to periodic retraining in most cases, making it a cost-effective strategy. However, in cases where data is changing rapidly, periodic retraining is still preferred to maximize the forecasting accuracy. These findings offer actionable insights for software teams to enhance forecasting systems, reducing retraining overhead while maintaining robust performance.

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资源预测 数据驱动 模型重训练 预测精度 成本效益
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