Oracle-based data generation for highly efficient digital twin network training

None Eliyahu Sason, None Yackov Lubarsky, None Alexei Gaissinski, None Eli Kravchik, None Pavel Kisilev
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Abstract

Recent advances in Graph Neural Networks (GNNs) has opened new capabilities to analyze complex communication systems. However, little work has been done to study the effects of limited data samples on the performance of GNN-based systems. In this paper, we present a novel solution to the problem of finding an optimal training set for efficient training of a RouteNet-Fermi GNN model. The proposed solution ensures good model generalization to large previously unseen networks under strict limitations on the training data budget and training topology sizes. Specifically, we generate an initial data set by emulating the flow distribution of large networks while using small networks. We then deploy a new clustering method that efficiently samples the above generated data set by analyzing the data embeddings from different Oracle models. This procedure provides a very small but information-rich training set. The above data embedding method translates highly heterogeneous network samples into a common embedding spac, wherein the samples can be easily related to each other. The proposed method outperforms state-of-the-art approaches, including the winning solutions of the 2022 Graph Neural Networking challenge.
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基于oracle的数据生成,用于高效的数字孪生网络训练
图神经网络(gnn)的最新进展开辟了分析复杂通信系统的新能力。然而,很少有人研究有限数据样本对基于gnn的系统性能的影响。本文针对RouteNet-Fermi GNN模型有效训练的最优训练集问题,提出了一种新的解决方案。该解决方案在严格限制训练数据预算和训练拓扑大小的情况下,确保了对以前未见过的大型网络的良好模型泛化。具体来说,我们通过在使用小型网络的同时模拟大型网络的流量分布来生成初始数据集。然后,我们部署了一种新的聚类方法,通过分析来自不同Oracle模型的数据嵌入,有效地对上述生成的数据集进行采样。这个程序提供了一个非常小但信息丰富的训练集。上述数据嵌入方法将高度异构的网络样本转化为一个公共的嵌入空间,其中样本可以很容易地相互关联。所提出的方法优于最先进的方法,包括2022年图神经网络挑战赛的获奖解决方案。
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