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Papers/Triplet Interaction Improves Graph Transformers: Accurate ...

Triplet Interaction Improves Graph Transformers: Accurate Molecular Graph Learning with Triplet Graph Transformers

Md Shamim Hussain, Mohammed J. Zaki, Dharmashankar Subramanian

2024-02-07Molecular Property PredictionDrug DiscoveryTransfer LearningGraph RegressionPredictionTraveling Salesman ProblemGraph LearningGraph Property PredictionInitial Structure to Relaxed Energy (IS2RE), DirectLink Prediction
PaperPDFCodeCodeCode(official)

Abstract

Graph transformers typically lack third-order interactions, limiting their geometric understanding which is crucial for tasks like molecular geometry prediction. We propose the Triplet Graph Transformer (TGT) that enables direct communication between pairs within a 3-tuple of nodes via novel triplet attention and aggregation mechanisms. TGT is applied to molecular property prediction by first predicting interatomic distances from 2D graphs and then using these distances for downstream tasks. A novel three-stage training procedure and stochastic inference further improve training efficiency and model performance. Our model achieves new state-of-the-art (SOTA) results on open challenge benchmarks PCQM4Mv2 and OC20 IS2RE. We also obtain SOTA results on QM9, MOLPCBA, and LIT-PCBA molecular property prediction benchmarks via transfer learning. We also demonstrate the generality of TGT with SOTA results on the traveling salesman problem (TSP).

Results

TaskDatasetMetricValueModel
Link PredictionTSP/HCP Benchmark setF10.871TGT-Agx4
Drug DiscoveryLIT-PCBA(KAT2A)AUC0.746EGT+TGT-At-DP
Drug DiscoveryLIT-PCBA(MAPK1)AUC0.743EGT+TGT-At-DP
Drug DiscoveryLIT-PCBA(ALDH1)AUC0.806EGT+TGT-At-DP
Graph RegressionPCQM4Mv2-LSCTest MAE0.0683TGT-At
Graph RegressionPCQM4Mv2-LSCValidation MAE0.0671TGT-At
Graph Property Predictionogbg-molpcbaNumber of params47000000TGT-Ag+TGT-At-DP

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