Cross-Network Learning with Partially Aligned Graph Convolutional
Networks
- URL: http://arxiv.org/abs/2106.01583v1
- Date: Thu, 3 Jun 2021 04:07:26 GMT
- Title: Cross-Network Learning with Partially Aligned Graph Convolutional
Networks
- Authors: Meng Jiang
- Abstract summary: I propose partially aligned graph convolutional networks to learn node representations across the models.
Experiments on real-world knowledge graphs and collaboration networks show the superior performance of our proposed methods.
- Score: 21.458260469446863
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Graph neural networks have been widely used for learning representations of
nodes for many downstream tasks on graph data. Existing models were designed
for the nodes on a single graph, which would not be able to utilize information
across multiple graphs. The real world does have multiple graphs where the
nodes are often partially aligned. For examples, knowledge graphs share a
number of named entities though they may have different relation schema;
collaboration networks on publications and awarded projects share some
researcher nodes who are authors and investigators, respectively; people use
multiple web services, shopping, tweeting, rating movies, and some may register
the same email account across the platforms. In this paper, I propose partially
aligned graph convolutional networks to learn node representations across the
models. I investigate multiple methods (including model sharing,
regularization, and alignment reconstruction) as well as theoretical analysis
to positively transfer knowledge across the (small) set of partially aligned
nodes. Extensive experiments on real-world knowledge graphs and collaboration
networks show the superior performance of our proposed methods on relation
classification and link prediction.
Related papers
- Representation learning in multiplex graphs: Where and how to fuse
information? [5.0235828656754915]
Multiplex graphs possess richer information, provide better modeling capabilities and integrate more detailed data from potentially different sources.
In this paper, we tackle the problem of learning representations for nodes in multiplex networks in an unsupervised or self-supervised manner.
We propose improvements in how to construct GNN architectures that deal with multiplex graphs.
arXiv Detail & Related papers (2024-02-27T21:47:06Z) - Learning on Graphs with Out-of-Distribution Nodes [33.141867473074264]
Graph Neural Networks (GNNs) are state-of-the-art models for performing prediction tasks on graphs.
This work defines the problem of graph learning with out-of-distribution nodes.
We propose Out-of-Distribution Graph Attention Network (OODGAT), a novel GNN model which explicitly models the interaction between different kinds of nodes.
arXiv Detail & Related papers (2023-08-13T08:10:23Z) - You Only Transfer What You Share: Intersection-Induced Graph Transfer
Learning for Link Prediction [79.15394378571132]
We investigate a previously overlooked phenomenon: in many cases, a densely connected, complementary graph can be found for the original graph.
The denser graph may share nodes with the original graph, which offers a natural bridge for transferring selective, meaningful knowledge.
We identify this setting as Graph Intersection-induced Transfer Learning (GITL), which is motivated by practical applications in e-commerce or academic co-authorship predictions.
arXiv Detail & Related papers (2023-02-27T22:56:06Z) - Semi-Supervised Hierarchical Graph Classification [54.25165160435073]
We study the node classification problem in the hierarchical graph where a 'node' is a graph instance.
We propose the Hierarchical Graph Mutual Information (HGMI) and present a way to compute HGMI with theoretical guarantee.
We demonstrate the effectiveness of this hierarchical graph modeling and the proposed SEAL-CI method on text and social network data.
arXiv Detail & Related papers (2022-06-11T04:05:29Z) - Edge but not Least: Cross-View Graph Pooling [76.71497833616024]
This paper presents a cross-view graph pooling (Co-Pooling) method to better exploit crucial graph structure information.
Through cross-view interaction, edge-view pooling and node-view pooling seamlessly reinforce each other to learn more informative graph-level representations.
arXiv Detail & Related papers (2021-09-24T08:01:23Z) - Temporal Graph Network Embedding with Causal Anonymous Walks
Representations [54.05212871508062]
We propose a novel approach for dynamic network representation learning based on Temporal Graph Network.
For evaluation, we provide a benchmark pipeline for the evaluation of temporal network embeddings.
We show the applicability and superior performance of our model in the real-world downstream graph machine learning task provided by one of the top European banks.
arXiv Detail & Related papers (2021-08-19T15:39:52Z) - COLOGNE: Coordinated Local Graph Neighborhood Sampling [1.6498361958317633]
replacing discrete unordered objects such as graph nodes by real-valued vectors is at the heart of many approaches to learning from graph data.
We address the problem of learning discrete node embeddings such that the coordinates of the node vector representations are graph nodes.
This opens the door to designing interpretable machine learning algorithms for graphs as all attributes originally present in the nodes are preserved.
arXiv Detail & Related papers (2021-02-09T11:39:06Z) - Learning Graph Representations [0.0]
Graph Neural Networks (GNNs) are efficient ways to get insight into large dynamic graph datasets.
In this paper, we discuss the graph convolutional neural networks graph autoencoders and Social-temporal graph neural networks.
arXiv Detail & Related papers (2021-02-03T12:07:55Z) - Co-embedding of Nodes and Edges with Graph Neural Networks [13.020745622327894]
Graph embedding is a way to transform and encode the data structure in high dimensional and non-Euclidean feature space.
CensNet is a general graph embedding framework, which embeds both nodes and edges to a latent feature space.
Our approach achieves or matches the state-of-the-art performance in four graph learning tasks.
arXiv Detail & Related papers (2020-10-25T22:39:31Z) - Factorizable Graph Convolutional Networks [90.59836684458905]
We introduce a novel graph convolutional network (GCN) that explicitly disentangles intertwined relations encoded in a graph.
FactorGCN takes a simple graph as input, and disentangles it into several factorized graphs.
We evaluate the proposed FactorGCN both qualitatively and quantitatively on the synthetic and real-world datasets.
arXiv Detail & Related papers (2020-10-12T03:01:40Z) - Multilevel Graph Matching Networks for Deep Graph Similarity Learning [79.3213351477689]
We propose a multi-level graph matching network (MGMN) framework for computing the graph similarity between any pair of graph-structured objects.
To compensate for the lack of standard benchmark datasets, we have created and collected a set of datasets for both the graph-graph classification and graph-graph regression tasks.
Comprehensive experiments demonstrate that MGMN consistently outperforms state-of-the-art baseline models on both the graph-graph classification and graph-graph regression tasks.
arXiv Detail & Related papers (2020-07-08T19:48:19Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.