Deep Graph-Level Clustering Using Pseudo-Label-Guided Mutual Information
Maximization Network
- URL: http://arxiv.org/abs/2302.02369v1
- Date: Sun, 5 Feb 2023 12:28:08 GMT
- Title: Deep Graph-Level Clustering Using Pseudo-Label-Guided Mutual Information
Maximization Network
- Authors: Jinyu Cai, Yi Han, Wenzhong Guo, Jicong Fan
- Abstract summary: We study the problem of partitioning a set of graphs into different groups such that the graphs in the same group are similar while the graphs in different groups are dissimilar.
To solve the problem, we propose a novel method called Deep Graph-Level Clustering (DGLC)
Our DGLC achieves graph-level representation learning and graph-level clustering in an end-to-end manner.
- Score: 31.38584638254226
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this work, we study the problem of partitioning a set of graphs into
different groups such that the graphs in the same group are similar while the
graphs in different groups are dissimilar. This problem was rarely studied
previously, although there have been a lot of work on node clustering and graph
classification. The problem is challenging because it is difficult to measure
the similarity or distance between graphs. One feasible approach is using graph
kernels to compute a similarity matrix for the graphs and then performing
spectral clustering, but the effectiveness of existing graph kernels in
measuring the similarity between graphs is very limited. To solve the problem,
we propose a novel method called Deep Graph-Level Clustering (DGLC). DGLC
utilizes a graph isomorphism network to learn graph-level representations by
maximizing the mutual information between the representations of entire graphs
and substructures, under the regularization of a clustering module that ensures
discriminative representations via pseudo labels. DGLC achieves graph-level
representation learning and graph-level clustering in an end-to-end manner. The
experimental results on six benchmark datasets of graphs show that our DGLC has
state-of-the-art performance in comparison to many baselines.
Related papers
- Deep Temporal Graph Clustering [77.02070768950145]
We propose a general framework for deep Temporal Graph Clustering (GC)
GC introduces deep clustering techniques to suit the interaction sequence-based batch-processing pattern of temporal graphs.
Our framework can effectively improve the performance of existing temporal graph learning methods.
arXiv Detail & Related papers (2023-05-18T06:17:50Z) - ID-MixGCL: Identity Mixup for Graph Contrastive Learning [22.486101865027678]
ID-MixGCL allows simultaneous datasets of input nodes and corresponding identity labels to obtain soft-confidence samples.
Results demonstrate that ID-MixGCL improves performance on graph classification and node classification tasks.
arXiv Detail & Related papers (2023-04-20T01:46:39Z) - GLCC: A General Framework for Graph-level Clustering [5.069852282550117]
This paper studies the problem of graph-level clustering, which is a novel yet challenging task.
We propose a general graph-level clustering framework named Graph-Level Contrastive Clustering (GLCC)
Experiments on a range of well-known datasets demonstrate the superiority of our proposed GLCC over competitive baselines.
arXiv Detail & Related papers (2022-10-21T11:08:10Z) - CGMN: A Contrastive Graph Matching Network for Self-Supervised Graph
Similarity Learning [65.1042892570989]
We propose a contrastive graph matching network (CGMN) for self-supervised graph similarity learning.
We employ two strategies, namely cross-view interaction and cross-graph interaction, for effective node representation learning.
We transform node representations into graph-level representations via pooling operations for graph similarity computation.
arXiv Detail & Related papers (2022-05-30T13:20:26Z) - Effective and Efficient Graph Learning for Multi-view Clustering [173.8313827799077]
We propose an effective and efficient graph learning model for multi-view clustering.
Our method exploits the view-similar between graphs of different views by the minimization of tensor Schatten p-norm.
Our proposed algorithm is time-economical and obtains the stable results and scales well with the data size.
arXiv Detail & Related papers (2021-08-15T13:14:28Z) - Weighted Graph Nodes Clustering via Gumbel Softmax [0.0]
We present some ongoing research results on graph clustering algorithms for clustering weighted graph datasets.
We name our algorithm as Weighted Graph Node Clustering via Gumbel Softmax (WGCGS)
arXiv Detail & Related papers (2021-02-22T05:05:35Z) - Inverse Graph Identification: Can We Identify Node Labels Given Graph
Labels? [89.13567439679709]
Graph Identification (GI) has long been researched in graph learning and is essential in certain applications.
This paper defines a novel problem dubbed Inverse Graph Identification (IGI)
We propose a simple yet effective method that makes the node-level message passing process using Graph Attention Network (GAT) under the protocol of GI.
arXiv Detail & Related papers (2020-07-12T12:06:17Z) - 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) - Graph Pooling with Node Proximity for Hierarchical Representation
Learning [80.62181998314547]
We propose a novel graph pooling strategy that leverages node proximity to improve the hierarchical representation learning of graph data with their multi-hop topology.
Results show that the proposed graph pooling strategy is able to achieve state-of-the-art performance on a collection of public graph classification benchmark datasets.
arXiv Detail & Related papers (2020-06-19T13:09:44Z)
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.