Adversarial Deep Network Embedding for Cross-network Node Classification
- URL: http://arxiv.org/abs/2002.07366v1
- Date: Tue, 18 Feb 2020 04:30:43 GMT
- Title: Adversarial Deep Network Embedding for Cross-network Node Classification
- Authors: Xiao Shen, Quanyu Dai, Fu-lai Chung, Wei Lu, Kup-Sze Choi
- Abstract summary: Cross-network node classification leverages the abundant labeled nodes from a source network to help classify unlabeled nodes in a target network.
In this paper, we propose an adversarial cross-network deep network embedding model to integrate adversarial domain adaptation with deep network embedding.
The proposed ACDNE model achieves the state-of-the-art performance in cross-network node classification.
- Score: 27.777464531860325
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, the task of cross-network node classification, which leverages
the abundant labeled nodes from a source network to help classify unlabeled
nodes in a target network, is studied. The existing domain adaptation
algorithms generally fail to model the network structural information, and the
current network embedding models mainly focus on single-network applications.
Thus, both of them cannot be directly applied to solve the cross-network node
classification problem. This motivates us to propose an adversarial
cross-network deep network embedding (ACDNE) model to integrate adversarial
domain adaptation with deep network embedding so as to learn network-invariant
node representations that can also well preserve the network structural
information. In ACDNE, the deep network embedding module utilizes two feature
extractors to jointly preserve attributed affinity and topological proximities
between nodes. In addition, a node classifier is incorporated to make node
representations label-discriminative. Moreover, an adversarial domain
adaptation technique is employed to make node representations
network-invariant. Extensive experimental results demonstrate that the proposed
ACDNE model achieves the state-of-the-art performance in cross-network node
classification.
Related papers
- Domain-adaptive Message Passing Graph Neural Network [67.35534058138387]
Cross-network node classification (CNNC) aims to classify nodes in a label-deficient target network by transferring the knowledge from a source network with abundant labels.
We propose a domain-adaptive message passing graph neural network (DM-GNN), which integrates graph neural network (GNN) with conditional adversarial domain adaptation.
arXiv Detail & Related papers (2023-08-31T05:26:08Z) - Collaborative Graph Neural Networks for Attributed Network Embedding [63.39495932900291]
Graph neural networks (GNNs) have shown prominent performance on attributed network embedding.
We propose COllaborative graph Neural Networks--CONN, a tailored GNN architecture for network embedding.
arXiv Detail & Related papers (2023-07-22T04:52:27Z) - One Node at a Time: Node-Level Network Classification [0.0]
We study the connection between classification of a network and of its constituent nodes.
We show that a classifier can be trained to accurately predict the network category of a given node.
We discuss two applications of node-level network classification: (i) whole-network classification from small samples of nodes, and (ii) network bootstrapping.
arXiv Detail & Related papers (2022-08-03T15:48:39Z) - Learning Asymmetric Embedding for Attributed Networks via Convolutional
Neural Network [19.611523749659355]
We propose a novel deep asymmetric attributed network embedding model based on convolutional graph neural network, called AAGCN.
The main idea is to maximally preserve the asymmetric proximity and asymmetric similarity of directed attributed networks.
We test the performance of AAGCN on three real-world networks for network reconstruction, link prediction, node classification and visualization tasks.
arXiv Detail & Related papers (2022-02-13T13:35:15Z) - A Variational Edge Partition Model for Supervised Graph Representation
Learning [51.30365677476971]
This paper introduces a graph generative process to model how the observed edges are generated by aggregating the node interactions over a set of overlapping node communities.
We partition each edge into the summation of multiple community-specific weighted edges and use them to define community-specific GNNs.
A variational inference framework is proposed to jointly learn a GNN based inference network that partitions the edges into different communities, these community-specific GNNs, and a GNN based predictor that combines community-specific GNNs for the end classification task.
arXiv Detail & Related papers (2022-02-07T14:37:50Z) - DeHIN: A Decentralized Framework for Embedding Large-scale Heterogeneous
Information Networks [64.62314068155997]
We present textitDecentralized Embedding Framework for Heterogeneous Information Network (DeHIN) in this paper.
DeHIN presents a context preserving partition mechanism that innovatively formulates a large HIN as a hypergraph.
Our framework then adopts a decentralized strategy to efficiently partition HINs by adopting a tree-like pipeline.
arXiv Detail & Related papers (2022-01-08T04:08:36Z) - Decoupled Variational Embedding for Signed Directed Networks [39.3449157396596]
We propose to learn more representative node embeddings by simultaneously capturing the first-order and high-order topology in signed directed networks.
In particular, we reformulate the representation learning problem on signed directed networks from a variational auto-encoding perspective.
Extensive experiments are conducted on three widely used real-world datasets.
arXiv Detail & Related papers (2020-08-28T02:48:15Z) - DINE: A Framework for Deep Incomplete Network Embedding [33.97952453310253]
We propose a Deep Incomplete Network Embedding method, namely DINE.
We first complete the missing part including both nodes and edges in a partially observable network by using the expectation-maximization framework.
We evaluate DINE over three networks on multi-label classification and link prediction tasks.
arXiv Detail & Related papers (2020-08-09T04:59:35Z) - Graph Prototypical Networks for Few-shot Learning on Attributed Networks [72.31180045017835]
We propose a graph meta-learning framework -- Graph Prototypical Networks (GPN)
GPN is able to perform textitmeta-learning on an attributed network and derive a highly generalizable model for handling the target classification task.
arXiv Detail & Related papers (2020-06-23T04:13:23Z) - Progressive Graph Convolutional Networks for Semi-Supervised Node
Classification [97.14064057840089]
Graph convolutional networks have been successful in addressing graph-based tasks such as semi-supervised node classification.
We propose a method to automatically build compact and task-specific graph convolutional networks.
arXiv Detail & Related papers (2020-03-27T08:32:16Z)
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.