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Van Thuy Hoang
Dept. of Artificial Intelligence,
The Catholic University of Korea
hoangvanthuy90@gmail.com
Proceedings of the 39th International Conference on Machine Learning
2
Background
 Graph Embedding tries to map graph vertices into a low-dimensional vector
space under the condition of preserving different types of graph properties.
 Node classification
 Link Prediction
 Network Visualization
 Community detection
 …...
3
Background
 Unsupervised vs. Supervised
 DeepWalk, LINE, node2vec, etc.
 GCN, GraphSAGE, etc.
 Euclidean vs. Non-Euclidean
 Hyperbolic space (Tag2Vec, WWW’19)
 Vector vs. Distribution
 Using variance to model uncertainty of semantic
4
Message passing GNNs use neighbourhood aggregation
 Limitations:
 Modeling long range dependencies
 Strong structural inductive bias
 Over smoothing
 Over squashing
 We need architectures beyond aggregation
5
Graph transformer could address some limitations of MP
 Key idea:
 Encode structural graph
 extracting a subgraph representation centered around each node
 Encode positional relationship between nodes in Tranformer
6
Contributions
 A self attention to deal local structures by extracting a subgraph rooted at
each nodes
 Can leverage any GNN to extract subgraph and create structure aware node
representation
 An effortless enchncer of any GNNs
7
Overview of an example SAT layer
 Overview of an example SAT layer that uses the k-subgraph GNN
extractor as its structure extractor.
8
From attention to structure-aware
 G = (V,E,X)
9
Structure-Aware Self-Attention
 k-subtree GNN extractor
 to extract local structural information at node u is to apply any
existing GNN model and take the output node representation at
u as the subgraph representation at u
 k-subgraph GNN extractor
 to use a GNN to directly compute the representation of the entire
k-hop subgraph centered at u
10
Experiments
 Datasets and Experimental Setup
 ZINC
 CLUSTER
 PATTERN
 Baselines
 GCN
 Graphsage
 GIN
 DeeperGCN
 Graph Transformer
11
SAT vs sparse GNN
 Since SAT uses a GNN to extract structures, compare the
performance of the original sparse GNN to SAT which uses that GNN
(“base GNN”)
12
Theorem
 The distance between their representations after the structure-aware
attention is bounded by:
NS - CUK Seminar : V.T.Hoang, Review on "Structure-Aware Transformer for Graph Representation Learning", ICML 2022

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NS - CUK Seminar : V.T.Hoang, Review on "Structure-Aware Transformer for Graph Representation Learning", ICML 2022

  • 1. Van Thuy Hoang Dept. of Artificial Intelligence, The Catholic University of Korea hoangvanthuy90@gmail.com Proceedings of the 39th International Conference on Machine Learning
  • 2. 2 Background  Graph Embedding tries to map graph vertices into a low-dimensional vector space under the condition of preserving different types of graph properties.  Node classification  Link Prediction  Network Visualization  Community detection  …...
  • 3. 3 Background  Unsupervised vs. Supervised  DeepWalk, LINE, node2vec, etc.  GCN, GraphSAGE, etc.  Euclidean vs. Non-Euclidean  Hyperbolic space (Tag2Vec, WWW’19)  Vector vs. Distribution  Using variance to model uncertainty of semantic
  • 4. 4 Message passing GNNs use neighbourhood aggregation  Limitations:  Modeling long range dependencies  Strong structural inductive bias  Over smoothing  Over squashing  We need architectures beyond aggregation
  • 5. 5 Graph transformer could address some limitations of MP  Key idea:  Encode structural graph  extracting a subgraph representation centered around each node  Encode positional relationship between nodes in Tranformer
  • 6. 6 Contributions  A self attention to deal local structures by extracting a subgraph rooted at each nodes  Can leverage any GNN to extract subgraph and create structure aware node representation  An effortless enchncer of any GNNs
  • 7. 7 Overview of an example SAT layer  Overview of an example SAT layer that uses the k-subgraph GNN extractor as its structure extractor.
  • 8. 8 From attention to structure-aware  G = (V,E,X)
  • 9. 9 Structure-Aware Self-Attention  k-subtree GNN extractor  to extract local structural information at node u is to apply any existing GNN model and take the output node representation at u as the subgraph representation at u  k-subgraph GNN extractor  to use a GNN to directly compute the representation of the entire k-hop subgraph centered at u
  • 10. 10 Experiments  Datasets and Experimental Setup  ZINC  CLUSTER  PATTERN  Baselines  GCN  Graphsage  GIN  DeeperGCN  Graph Transformer
  • 11. 11 SAT vs sparse GNN  Since SAT uses a GNN to extract structures, compare the performance of the original sparse GNN to SAT which uses that GNN (“base GNN”)
  • 12. 12 Theorem  The distance between their representations after the structure-aware attention is bounded by: