cs.AI updates on arXiv.org 07月15日 12:24
Queue up for takeoff: a transferable deep learning framework for flight delay prediction
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本文提出结合队列理论和注意力机制的QT-SimAM模型,有效预测航班延误,提升乘客体验和减少经济损失。

arXiv:2507.09084v1 Announce Type: cross Abstract: Flight delays are a significant challenge in the aviation industry, causing major financial and operational disruptions. To improve passenger experience and reduce revenue loss, flight delay prediction models must be both precise and generalizable across different networks. This paper introduces a novel approach that combines Queue-Theory with a simple attention model, referred to as the Queue-Theory SimAM (QT-SimAM). To validate our model, we used data from the US Bureau of Transportation Statistics, where our proposed QT-SimAM (Bidirectional) model outperformed existing methods with an accuracy of 0.927 and an F1 score of 0.932. To assess transferability, we tested the model on the EUROCONTROL dataset. The results demonstrated strong performance, achieving an accuracy of 0.826 and an F1 score of 0.791. Ultimately, this paper outlines an effective, end-to-end methodology for predicting flight delays. The proposed model's ability to forecast delays with high accuracy across different networks can help reduce passenger anxiety and improve operational decision-making

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航班延误 预测模型 队列理论 注意力机制 QT-SimAM
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