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Shift Aggregate Extract Networks

About

We introduce an architecture based on deep hierarchical decompositions to learn effective representations of large graphs. Our framework extends classic R-decompositions used in kernel methods, enabling nested part-of-part relations. Unlike recursive neural networks, which unroll a template on input graphs directly, we unroll a neural network template over the decomposition hierarchy, allowing us to deal with the high degree variability that typically characterize social network graphs. Deep hierarchical decompositions are also amenable to domain compression, a technique that reduces both space and time complexity by exploiting symmetries. We show empirically that our approach is able to outperform current state-of-the-art graph classification methods on large social network datasets, while at the same time being competitive on small chemobiological benchmark datasets.

Francesco Orsini, Daniele Baracchi, Paolo Frasconi• 2017

Related benchmarks

TaskDatasetResultRank
Graph ClassificationPROTEINS
Accuracy75.31
1252
Graph ClassificationMUTAG
Accuracy84.99
1103
Graph ClassificationNCI1
Accuracy77.8
658
Graph ClassificationCOLLAB
Accuracy75.63
469
Graph ClassificationIMDB-B
Accuracy71.26
425
Graph ClassificationMUTAG (10-fold cross-validation)
Accuracy84.99
227
Graph ClassificationPROTEINS (10-fold cross-validation)
Accuracy75.31
223
Graph ClassificationPTC
Accuracy57.04
167
Graph ClassificationIMDB-B (10-fold cross-validation)
Accuracy71.59
155
Graph ClassificationIMDB MULTI
Accuracy49.11
139
Showing 10 of 15 rows

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