2023
DOI: 10.52953/afyw5455
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Designing graph neural networks training data with limited samples and small network sizes

Junior Momo Ziazet,
Charles Boudreau,
Oscar Delgado
et al.

Abstract: Machine learning is a data-driven domain, which means a learning model's performance depends on the availability of large volumes of data to train it. However, by improving data quality, we can train effective machine learning models with little data. This paper demonstrates this possibility by proposing a methodology to generate high-quality data in the networking domain. We designed a dataset to train a given Graph Neural Network (GNN) that not only contains a small number of samples, but whose samples also … Show more

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