cs.AI updates on arXiv.org 07月15日 12:27
BiDepth: A Bidirectional-Depth Neural Network for Spatio-Temporal Prediction
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本文提出BiDepth Multimodal Neural Network(BDMNN)模型,通过双向深度调节机制和卷积自注意力细胞,有效提升动态系统时空预测的准确性,在交通和降水预测中优于现有深度学习方法。

arXiv:2501.08411v3 Announce Type: replace-cross Abstract: Accurate spatial-temporal (ST) prediction for dynamic systems, such as urban mobility and weather patterns, is crucial but hindered by complex ST correlations and the challenge of concurrently modeling long-term trends with short-term fluctuations. Existing methods often falter in these areas. This paper proposes the BiDepth Multimodal Neural Network (BDMNN), which integrates two key innovations: 1) a bidirectional depth modulation mechanism that dynamically adjusts network depth to comprehensively capture both long-term seasonality and immediate short-term events; and 2) a novel convolutional self-attention cell (CSAC). Critically, unlike many attention mechanisms that can lose spatial acuity, our CSAC is specifically designed to preserve crucial spatial relationships throughout the network, akin to standard convolutional layers, while simultaneously capturing temporal dependencies. Evaluated on real-world urban traffic and precipitation datasets, BDMNN demonstrates significant accuracy improvements, achieving a 12% Mean Squared Error (MSE) reduction in urban traffic prediction and a 15% improvement in precipitation forecasting over leading deep learning benchmarks like ConvLSTM, using comparable computational resources. These advancements offer robust ST forecasting for smart city management, disaster prevention, and resource optimization.

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时空预测 深度学习 BDMNN模型 城市交通 降水预测
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