LightNestle:通过元学习快速准确的神经序列张量补全

Yuhui Li, Wei Liang, Kun Xie, Dafang Zhang, Songyou Xie, Kuan Li
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引用次数: 1

摘要

网络运维在很大程度上依赖于对网络流量的监控。网络流量监控系统由于测量开销的降低、测量基础设施的缺乏以及不可预期的传输误差等原因,存在观测数据不完整和数据稀疏度高的问题。最近的研究将缺失数据恢复模型作为张量补全任务,并取得了良好的效果。目前网络流量数据恢复中采用的张量补全模型虽然前景广阔,但缺乏一种有效的再训练方案,既能适应新到达的数据,又能保留历史信息。为了解决这个问题,我们提出了一种基于元学习的序列张量补全方案LightNestle,它设计了(1)一个表达性神经网络,将空间知识从以前的嵌入转移到当前的嵌入;(2)基于注意力的模块,将时间模式转换为线性复杂性的当前嵌入;(3)基于元学习的迭代恢复缺失数据和更新迁移模块以赶上所学知识的算法。我们在两个真实的网络流量数据集上进行了广泛的实验来评估我们的性能。结果表明,该方法具有快速再训练和高恢复精度的特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LightNestle: Quick and Accurate Neural Sequential Tensor Completion via Meta Learning
Network operation and maintenance rely heavily on network traffic monitoring. Due to the measurement overhead reduction, lack of measurement infrastructure, and unexpected transmission error, network traffic monitoring systems suffer from incomplete observed data and high data sparsity problems. Recent studies model missing data recovery as a tensor completion task and show good performance. Although promising, the current tensor completion models adopted in network traffic data recovery lack an effective and efficient retraining scheme to adapt to newly arrived data while retaining historical information. To solve the problem, we propose LightNestle, a novel sequential tensor completion scheme based on meta-learning, which designs (1) an expressive neural network to transfer spatial knowledge from previous embeddings to current embeddings; (2) an attention-based module to transfer temporal patterns into current embeddings in linear complexity; and (3) meta-learning-based algorithms to iteratively recover missing data and update transfer modules to catch up with learned knowledge. We conduct extensive experiments on two real-world network traffic datasets to assess our performance. Results show that our proposed methods achieve both fast retraining and high recovery accuracy.
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