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TopoTune : A Framework for Generalized Combinatorial Complex Neural Networks

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Graph Neural Networks (GNNs) effectively learn from relational data by leveraging graph symmetries. However, many real-world systems -- such as biological or social networks -- feature multi-way interactions that GNNs fail to capture. Topological Deep Learning (TDL) addresses this by modeling and leveraging higher-order structures, with Combinatorial Complex Neural Networks (CCNNs) offering a general and expressive approach that has been shown to outperform GNNs. However, TDL lacks the principled and standardized frameworks that underpin GNN development, restricting its accessibility and applicability. To address this issue, we introduce Generalized CCNNs (GCCNs), a simple yet powerful family of TDL models that can be used to systematically transform any (graph) neural network into its TDL counterpart. We prove that GCCNs generalize and subsume CCNNs, while extensive experiments on a diverse class of GCCNs show that these architectures consistently match or outperform CCNNs, often with less model complexity. In an effort to accelerate and democratize TDL, we introduce TopoTune, a lightweight software for defining, building, and training GCCNs with unprecedented flexibility and ease.

Mathilde Papillon, Guillermo Bern\'ardez, Claudio Battiloro, Nina Miolane• 2024

Related benchmarks

TaskDatasetResultRank
Graph ClassificationPROTEINS
Accuracy72.5
1252
Graph ClassificationMUTAG
Accuracy86.4
1103
Graph ClassificationNCI1
Accuracy77.6
658
Graph ClassificationNCI109
Accuracy77.2
267
Graph ClassificationMutag (test)
Accuracy76.6
224
Graph ClassificationIMDB-B
Mean Accuracy76.3
159
Graph ClassificationPTC
Accuracy67.2
46
Molecular RegressionZINC small 12K
MAE0.191
20
Molecular RegressionZINC Full 250K
MAE0.103
7
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