Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

MultiSAGE: a multiplex embedding algorithm for inter-layer link prediction

About

Research on graph representation learning has received great attention in recent years. However, most of the studies so far have focused on the embedding of single-layer graphs. The few studies dealing with the problem of representation learning of multilayer structures rely on the strong hypothesis that the inter-layer links are known, and this limits the range of possible applications. Here we propose MultiSAGE, a generalization of the GraphSAGE algorithm that allows to embed multiplex networks. We show that MultiSAGE is capable to reconstruct both the intra-layer and the inter-layer connectivity, outperforming GraphSAGE, which has been designed for simple graphs. Next, through a comprehensive experimental analysis, we shed light also on the performance of the embedding, both in simple and in multiplex networks, showing that either the density of the graph or the randomness of the links strongly influences the quality of the embedding.

Luca Gallo, Vito Latora, Alfredo Pulvirenti• 2022

Related benchmarks

TaskDatasetResultRank
Multiplex interaction predictionChEMBL
AUROC65.3
32
Multiplex interaction predictionDGIdb zero-shot
AUROC51.8
20
Multiplex interaction predictionMetaConserve zero-shot
AUROC0.697
20
Multiplex interaction predictionMetaConserve (transductive)
AUROC69.3
20
Multiplex interaction predictionDGIdb (transductive)
AUROC0.532
20
Multiplex interaction predictionPINNACLE zero-shot
AUROC72.8
16
Multiplex interaction predictionPINNACLE (transductive split)
AUROC0.752
16
Multiplex interaction predictionTRRUST zero-shot
AUROC (zero-shot)85
16
Multiplex interaction predictionTRRUST transductive (T)
AUROC0.86
16
Showing 9 of 9 rows

Other info

Follow for update