Journal of Computer Applications ›› 2026, Vol. 46 ›› Issue (6): 1836-1843.DOI: 10.11772/j.issn.1001-9081.2025050647
• Data science and technology • Previous Articles
Jinghong WANG1,2,3,4,5, Xiao CHEN1, Yingmei MA2,5(
), Bi LI6, Jusheng MI7, Wei WANG1
Received:2025-06-12
Revised:2025-08-16
Accepted:2025-09-01
Online:2025-09-15
Published:2026-06-10
Contact:
Yingmei MA
About author:WANG Jinghong, born in 1967, Ph. D., professor. Her research interests include artificial intelligence, data mining.Supported by:
王静红1,2,3,4,5, 陈潇1, 马迎梅2,5(
), 李笔6, 米据生7, 王威1
通讯作者:
马迎梅
作者简介:王静红(1967—),女,河北石家庄人,教授,博士,CCF会员,主要研究方向:人工智能、数据挖掘基金资助:CLC Number:
Jinghong WANG, Xiao CHEN, Yingmei MA, Bi LI, Jusheng MI, Wei WANG. Multi-level neighborhood contrastive attribute graph clustering based on adaptive learning[J]. Journal of Computer Applications, 2026, 46(6): 1836-1843.
王静红, 陈潇, 马迎梅, 李笔, 米据生, 王威. 基于自适应学习的多层次邻域对比属性图聚类[J]. 《计算机应用》唯一官方网站, 2026, 46(6): 1836-1843.
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URL: https://www.joca.cn/EN/10.11772/j.issn.1001-9081.2025050647
| 符号 | 含义 | 符号 | 含义 |
|---|---|---|---|
| 属性图 | 编码表示矩阵 | ||
| 节点集 | 投影表示矩阵 | ||
| 边集 | 目标分布更新间隔 | ||
| 节点特征矩阵 | 温度参数 | ||
| 度矩阵 | 编码级损失超参数 | ||
| n | 节点数 | pro | 投影级损失超参数 |
| 集群数 | 生成分布函数 | ||
| 邻接矩阵 | 目标分布函数 | ||
| 增广邻接矩阵 | 聚类中心 | ||
| 嵌入矩阵 | 预测标签 | ||
| 边嵌入向量 | 对比学习优化超参数 | ||
| 边权重矩阵 | 自监督聚类优化超参数 |
Tab. 1 Symbol definition
| 符号 | 含义 | 符号 | 含义 |
|---|---|---|---|
| 属性图 | 编码表示矩阵 | ||
| 节点集 | 投影表示矩阵 | ||
| 边集 | 目标分布更新间隔 | ||
| 节点特征矩阵 | 温度参数 | ||
| 度矩阵 | 编码级损失超参数 | ||
| n | 节点数 | pro | 投影级损失超参数 |
| 集群数 | 生成分布函数 | ||
| 邻接矩阵 | 目标分布函数 | ||
| 增广邻接矩阵 | 聚类中心 | ||
| 嵌入矩阵 | 预测标签 | ||
| 边嵌入向量 | 对比学习优化超参数 | ||
| 边权重矩阵 | 自监督聚类优化超参数 |
| 数据集 | 节点数 | 边数 | 特征维度 | 标签数 |
|---|---|---|---|---|
| Cora | 2 708 | 5 429 | 1 433 | 7 |
| CiteSeer | 3 327 | 4 732 | 3 703 | 6 |
| PubMed | 19 717 | 44 338 | 500 | 3 |
Tab. 2 Dataset information
| 数据集 | 节点数 | 边数 | 特征维度 | 标签数 |
|---|---|---|---|---|
| Cora | 2 708 | 5 429 | 1 433 | 7 |
| CiteSeer | 3 327 | 4 732 | 3 703 | 6 |
| PubMed | 19 717 | 44 338 | 500 | 3 |
| 超参数 | 含义 | 值 |
|---|---|---|
| 预训练次数 | 120 | |
| 学习率 | 0.000 1 | |
| 正式训练次数 | 50 | |
| 编码级损失超参数 | 1 | |
| 投影级损失超参数 | 0.1 | |
| 对比学习优化超参数 | 1 | |
| 自监督聚类优化超参数 | 1 |
Tab. 3 Hyperparameter setting
| 超参数 | 含义 | 值 |
|---|---|---|
| 预训练次数 | 120 | |
| 学习率 | 0.000 1 | |
| 正式训练次数 | 50 | |
| 编码级损失超参数 | 1 | |
| 投影级损失超参数 | 0.1 | |
| 对比学习优化超参数 | 1 | |
| 自监督聚类优化超参数 | 1 |
| 方法 | Cora | CiteSeer | PubMed | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| ACC | F1 | NMI | ARI | ACC | F1 | NMI | ARI | ACC | F1 | NMI | ARI | |
| GRACE | 60.22 | 58.01 | 47.11 | 35.91 | 62.13 | 62.04 | 37.90 | 37.15 | Out of memory | |||
| SDCN | 6.67 | 27.41 | 18.73 | 8.29 | 64.29 | 59.32 | 36.49 | 38.17 | 62.32 | 61.53 | 23.04 | 21.64 |
| AGCN | 38.74 | 28.59 | 18.55 | 9.62 | 67.54 | 62.46 | 39.12 | 41.85 | 62.44 | 60.52 | 23.94 | 21.67 |
| GCA | 56.33 | 51.13 | 46.36 | 30.16 | 64.47 | 60.03 | 39.57 | 39.45 | 66.67 | 66.18 | 33.11 | 28.33 |
| GC-VGE | 70.68 | 69.48 | 53.57 | 48.15 | 66.61 | 63.39 | 40.91 | 41.52 | 66.88 | 29.71 | 29.76 | |
| DNENC-con | 68.30 | 65.90 | 51.20 | 47.70 | 69.20 | 63.90 | 42.60 | 44.90 | 67.70 | 27.50 | 27.80 | |
| DNENC-att | 70.40 | 68.20 | 52.80 | 49.60 | 67.20 | 63.60 | 39.70 | 41.00 | 67.10 | 65.90 | 26.60 | 27.80 |
| AGGDC | 74.60 | — | 52.20 | 69.60 | — | 45.80 | 61.90 | — | 29.50 | |||
| ASP | 65.81 | 60.58 | 55.99 | 46.78 | 68.66 | 64.20 | 43.78 | 44.83 | Out of memory | |||
| CCGC | 74.36 | 56.32 | 52.13 | 69.35 | 62.21 | 43.47 | 44.12 | 62.47 | 61.38 | 27.72 | 25.67 | |
| CGC | 66.22 | 56.90 | 69.31 | 64.74 | 43.61 | 42.14 | 67.43 | 67.14 | 33.07 | |||
| CoCGC | 72.51 | 68.71 | 56.15 | 49.49 | 70.15 | 62.88 | 44.58 | 45.29 | — | — | — | — |
| AMGC | 66.65 | 61.02 | 47.99 | 43.40 | 60.92 | 57.33 | 32.93 | 33.73 | 64.56 | 64.52 | 24.58 | 24.19 |
| MPCCL | 72.03 | 69.73 | 53.86 | 52.29 | 70.56 | 45.10 | 46.90 | — | — | — | — | |
| MNCGC | 75.52 | 73.42 | 59.57 | 58.06 | 66.75 | 45.43 | 71.08 | 70.84 | 35.57 | 34.48 | ||
Tab. 4 Comparison of clustering performance of methods on three experimental datasets
| 方法 | Cora | CiteSeer | PubMed | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| ACC | F1 | NMI | ARI | ACC | F1 | NMI | ARI | ACC | F1 | NMI | ARI | |
| GRACE | 60.22 | 58.01 | 47.11 | 35.91 | 62.13 | 62.04 | 37.90 | 37.15 | Out of memory | |||
| SDCN | 6.67 | 27.41 | 18.73 | 8.29 | 64.29 | 59.32 | 36.49 | 38.17 | 62.32 | 61.53 | 23.04 | 21.64 |
| AGCN | 38.74 | 28.59 | 18.55 | 9.62 | 67.54 | 62.46 | 39.12 | 41.85 | 62.44 | 60.52 | 23.94 | 21.67 |
| GCA | 56.33 | 51.13 | 46.36 | 30.16 | 64.47 | 60.03 | 39.57 | 39.45 | 66.67 | 66.18 | 33.11 | 28.33 |
| GC-VGE | 70.68 | 69.48 | 53.57 | 48.15 | 66.61 | 63.39 | 40.91 | 41.52 | 66.88 | 29.71 | 29.76 | |
| DNENC-con | 68.30 | 65.90 | 51.20 | 47.70 | 69.20 | 63.90 | 42.60 | 44.90 | 67.70 | 27.50 | 27.80 | |
| DNENC-att | 70.40 | 68.20 | 52.80 | 49.60 | 67.20 | 63.60 | 39.70 | 41.00 | 67.10 | 65.90 | 26.60 | 27.80 |
| AGGDC | 74.60 | — | 52.20 | 69.60 | — | 45.80 | 61.90 | — | 29.50 | |||
| ASP | 65.81 | 60.58 | 55.99 | 46.78 | 68.66 | 64.20 | 43.78 | 44.83 | Out of memory | |||
| CCGC | 74.36 | 56.32 | 52.13 | 69.35 | 62.21 | 43.47 | 44.12 | 62.47 | 61.38 | 27.72 | 25.67 | |
| CGC | 66.22 | 56.90 | 69.31 | 64.74 | 43.61 | 42.14 | 67.43 | 67.14 | 33.07 | |||
| CoCGC | 72.51 | 68.71 | 56.15 | 49.49 | 70.15 | 62.88 | 44.58 | 45.29 | — | — | — | — |
| AMGC | 66.65 | 61.02 | 47.99 | 43.40 | 60.92 | 57.33 | 32.93 | 33.73 | 64.56 | 64.52 | 24.58 | 24.19 |
| MPCCL | 72.03 | 69.73 | 53.86 | 52.29 | 70.56 | 45.10 | 46.90 | — | — | — | — | |
| MNCGC | 75.52 | 73.42 | 59.57 | 58.06 | 66.75 | 45.43 | 71.08 | 70.84 | 35.57 | 34.48 | ||
| lr | Cora | CiteSeer | PubMed | ||||||
|---|---|---|---|---|---|---|---|---|---|
| τ=0.5 | τ=1.0 | τ=1.5 | τ=0.5 | τ=1.0 | τ=1.5 | τ=0.5 | τ=1.0 | τ=1.5 | |
| 0.000 1 | 72.51 | 72.71 | 72.35 | 67.48 | 68.82 | 68.67 | 67.65 | 69.11 | 68.04 |
| 0.000 3 | 74.68 | 75.52 | 73.79 | 68.51 | 70.24 | 67.32 | 68.47 | 70.14 | 68.71 |
| 0.000 5 | 73.06 | 73.39 | 73.01 | 66.53 | 69.33 | 66.58 | 68.29 | 71.08 | 69.24 |
Tab. 5 Experimental results comparison of parameter sensitivity (ACC)
| lr | Cora | CiteSeer | PubMed | ||||||
|---|---|---|---|---|---|---|---|---|---|
| τ=0.5 | τ=1.0 | τ=1.5 | τ=0.5 | τ=1.0 | τ=1.5 | τ=0.5 | τ=1.0 | τ=1.5 | |
| 0.000 1 | 72.51 | 72.71 | 72.35 | 67.48 | 68.82 | 68.67 | 67.65 | 69.11 | 68.04 |
| 0.000 3 | 74.68 | 75.52 | 73.79 | 68.51 | 70.24 | 67.32 | 68.47 | 70.14 | 68.71 |
| 0.000 5 | 73.06 | 73.39 | 73.01 | 66.53 | 69.33 | 66.58 | 68.29 | 71.08 | 69.24 |
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