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Papers/Ranking Structured Objects with Graph Neural Networks

Ranking Structured Objects with Graph Neural Networks

Clemens Damke, Eyke Hüllermeier

2021-04-18Molecular Property PredictionLearning-To-RankGraph RankingGraph Regression
PaperPDFCode(official)

Abstract

Graph neural networks (GNNs) have been successfully applied in many structured data domains, with applications ranging from molecular property prediction to the analysis of social networks. Motivated by the broad applicability of GNNs, we propose the family of so-called RankGNNs, a combination of neural Learning to Rank (LtR) methods and GNNs. RankGNNs are trained with a set of pair-wise preferences between graphs, suggesting that one of them is preferred over the other. One practical application of this problem is drug screening, where an expert wants to find the most promising molecules in a large collection of drug candidates. We empirically demonstrate that our proposed pair-wise RankGNN approach either significantly outperforms or at least matches the ranking performance of the naive point-wise baseline approach, in which the LtR problem is solved via GNN-based graph regression.

Results

TaskDatasetMetricValueModel
Graph Rankingogbg-molfreesolvKendall's Tau0.3792-WL-GNN + Utility Regression
Graph Rankingogbg-molfreesolvKendall's Tau0.5242-WL-GNN + Rank Regression
Graph Rankingogbg-molfreesolvKendall's Tau0.5252-WL-GNN + DirectRanker
Graph Rankingogbg-molfreesolvKendall's Tau0.5272-WL-GNN + CmpNN
Graph RankingZINCKendall's Tau0.8942-WL-GNN + DirectRanker
Graph RankingZINCKendall's Tau0.8732-WL-GNN + CmpNN
Graph RankingZINCKendall's Tau0.812-WL-GNN + Rank Regression
Graph RankingZINCKendall's Tau0.8032-WL-GNN + Utility Regression
Graph Rankingogbg-molesolKendall's Tau0.7182-WL-GNN + CmpNN
Graph Rankingogbg-molesolKendall's Tau0.722-WL-GNN + Rank Regression
Graph Rankingogbg-molesolKendall's Tau0.7452-WL-GNN + DirectRanker
Graph Rankingogbg-molesolKendall's Tau0.7472-WL-GNN + Utility Regression
Graph Rankingogbg-mollipoKendall's Tau0.3182-WL-GNN + Utility Regression
Graph Rankingogbg-mollipoKendall's Tau0.3322-WL-GNN + Rank Regression
Graph Rankingogbg-mollipoKendall's Tau0.5032-WL-GNN + CmpNN
Graph Rankingogbg-mollipoKendall's Tau0.5052-WL-GNN + DirectRanker

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