2021
DOI: 10.1007/s10994-021-06007-5
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A comparison of statistical relational learning and graph neural networks for aggregate graph queries

Abstract: Statistical relational learning (SRL) and graph neural networks (GNNs) are two powerful approaches for learning and inference over graphs. Typically, they are evaluated in terms of simple metrics such as accuracy over individual node labels. Complex aggregate graph queries (AGQ) involving multiple nodes, edges, and labels are common in the graph mining community and are used to estimate important network properties such as social cohesion and influence. While graph mining algorithms support AGQs, they typicall… Show more

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Cited by 3 publications
(2 citation statements)
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References 26 publications
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“…Interestingly, compared to a naive approach of expression-based reconstruction (Figure 3B), query cells were more mixed across samples according to data type (Supplementary Figure 8A-B), suggesting that SageNet is better able to account for platform-specific variation in reconstruction. We conclude that leveraging GINs as inductive bias to train GNNs makes SageNet robust and transferable to new unseen datasets (Embar, Srinivasan, and Getoor 2021).…”
Section: Resultsmentioning
confidence: 91%
“…Interestingly, compared to a naive approach of expression-based reconstruction (Figure 3B), query cells were more mixed across samples according to data type (Supplementary Figure 8A-B), suggesting that SageNet is better able to account for platform-specific variation in reconstruction. We conclude that leveraging GINs as inductive bias to train GNNs makes SageNet robust and transferable to new unseen datasets (Embar, Srinivasan, and Getoor 2021).…”
Section: Resultsmentioning
confidence: 91%
“…They are typically assessed using straightforward metrics, including accuracy on individual node labels. In order to compute the values of aggregate graph queries in a tractable manner, Embar, Srinivasan & Getoor (2021) developed a sampling methodology (AGQ). Such an approach is ineffective for arranging the meaning of a legal document because it only organizes data from social networks.…”
Section: Related Workmentioning
confidence: 99%