The paper introduces MPXGAT, an attention-based deep learning model for embedding multiplex networks. Multiplex networks are complex systems where entities engage in diverse interactions, represented by multiple interconnected layers.
The key features of MPXGAT are:
It leverages the robustness of Graph Attention Networks (GATs) to capture the structure of multiplex networks by harnessing both intra-layer and inter-layer connections.
It generates two separate embeddings for each node - one based on the horizontal (intra-layer) network and one based on the vertical (inter-layer) network. This dual exploitation facilitates accurate link prediction within and across the network's multiple layers.
The authors conduct a comprehensive experimental evaluation on three benchmark multiplex network datasets - arXiv, Drosophila, and ff-tw-yt. The results show that MPXGAT consistently outperforms state-of-the-art competing algorithms in predicting both intra-layer and inter-layer links.
The authors also analyze the impact of the horizontal embeddings on the performance of MPXGAT, demonstrating that incorporating this information significantly improves the model's ability to predict inter-layer connections.
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