Attention mechanism enhanced LSTM networks for latency prediction in deterministic MEC networks

Zhonglu Zou, Xin Yan, Yongshi Yuan, Zilin You, Liming Chen
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Abstract

In deterministic mobile edge computing (MEC) networks, accurately predicting latency is critical for optimizing resource allocation and enhancing quality of service (QoS). This paper introduces a novel approach leveraging attention mechanism enhanced long short-term memory (LSTM) networks to predict latency in MEC networks. The proposed model integrates attention mechanisms into LSTM networks to capture temporal dependency and emphasize relevant features in the input data, thereby improving the prediction accuracy. T extensive experiments are conducted by using practical MEC network data, demonstrating that the proposed approach significantly outperforms traditional LSTM and other baseline models in terms of prediction accuracy and computational efficiency. Additionally, we analyze the impact of various configurations in the attention mechanism and LSTM on the model performance, providing insights into the optimal settings. The findings of this study contribute to the advancement of latency prediction techniques in deterministic MEC networks, facilitating more efficient and reliable network management.

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用于确定性 MEC 网络延迟预测的注意力机制增强型 LSTM 网络
在确定性移动边缘计算(MEC)网络中,准确预测延迟对于优化资源分配和提高服务质量(QoS)至关重要。本文介绍了一种利用注意力机制增强型长短期记忆(LSTM)网络预测 MEC 网络延迟的新方法。所提出的模型将注意力机制集成到 LSTM 网络中,以捕捉时间依赖性并强调输入数据中的相关特征,从而提高预测准确性。我们使用实际的 MEC 网络数据进行了大量实验,结果表明所提出的方法在预测准确性和计算效率方面明显优于传统的 LSTM 和其他基线模型。此外,我们还分析了注意力机制和 LSTM 的各种配置对模型性能的影响,为最佳设置提供了启示。本研究的发现有助于推动确定性 MEC 网络中延迟预测技术的发展,从而促进更高效、更可靠的网络管理。
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