Non quia difficilia sunt non audemus, sed quia non audemus difficilia sunt
Home -> Publications
Home
  Publications
    
edited volumes
  Awards
  Research
  Teaching
  Miscellaneous
  Full CV [pdf]
  BLOG






  Events








  Past Events





Publications of Torsten Hoefler
Maciej Besta, Raphael Grob, Cesare Miglioli, Nicola Bernold, Grzegorz Kwasniewski, Gabriel Gjini, Raghavendra Kanakagiri, Saleh Ashkboos, Lukas Gianinazzi, Nikoli Dryden, Torsten Hoefler:

 Motif Prediction with Graph Neural Networks

(In Proceedings of the 28th SIGKDD Conference on Knowledge Discovery and Data Mining (KDD'22), presented in Washington DC, USA, pages 35–45, Association for Computing Machinery, ISBN: 9781450393850, Aug. 2022)

Publisher Reference

Abstract

Link prediction is one of the central problems in graph mining. However, recent studies highlight the importance of higher-order network analysis, where complex structures called motifs are the first-class citizens. We first show that existing link prediction schemes fail to effectively predict motifs. To alleviate this, we establish a general motif prediction problem and we propose several heuristics that assess the chances for a specified motif to appear. To make the scores realistic, our heuristics consider - among others - correlations between links, i.e., the potential impact of some arriving links on the appearance of other links in a given motif. Finally, for highest accuracy, we develop a graph neural network (GNN) architecture for motif prediction. Our architecture offers vertex features and sampling schemes that capture the rich structural properties of motifs. While our heuristics are fast and do not need any training, GNNs ensure highest accuracy of predicting motifs, both for dense (e.g., k-cliques) and for sparse ones (e.g., k-stars). We consistently outperform the best available competitor by more than 10% on average and up to 32% in area under the curve. Importantly, the advantages of our approach over schemes based on uncorrelated link prediction increase with the increasing motif size and complexity. We also successfully apply our architecture for predicting more arbitrary clusters and communities, illustrating its potential for graph mining beyond motif analysis.

Documents

Publisher URL: https://doi.org/10.1145/3534678.3539343download article:     
download slides:


Recorded talk (best effort)

 

BibTeX

@inproceedings{,
  author={Maciej Besta and Raphael Grob and Cesare Miglioli and Nicola Bernold and Grzegorz Kwasniewski and Gabriel Gjini and Raghavendra Kanakagiri and Saleh Ashkboos and Lukas Gianinazzi and Nikoli Dryden and Torsten Hoefler},
  title={{Motif Prediction with Graph Neural Networks}},
  year={2022},
  month={Aug.},
  pages={35–45},
  booktitle={Proceedings of the 28th SIGKDD Conference on Knowledge Discovery and Data Mining (KDD'22)},
  location={Washington DC, USA},
  publisher={Association for Computing Machinery},
  isbn={9781450393850},
  source={http://www.unixer.de/~htor/publications/},
}


serving: 18.117.78.87:63406© Torsten Hoefler