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基于趋势一致性学习的对比聚类算法

高小方 贾宗翰 梁吉业

智能系统学报2026,Vol.21Issue(2):389-398,10.
智能系统学报2026,Vol.21Issue(2):389-398,10.DOI:10.11992/tis.202506027

基于趋势一致性学习的对比聚类算法

Contrastive clustering algorithm based on trend consistency learning

高小方 1贾宗翰 1梁吉业2

作者信息

  • 1. 山西大学计算机与信息技术学院,山西太原 030006
  • 2. 山西大学计算机与信息技术学院,山西太原 030006||计算智能与中文处理教育部实验室,山西太原 030006
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摘要

Abstract

In recent years,contrastive clustering has become a research hotspot in the fields of data mining and machine learning,aiming to enhance clustering performance by leveraging the powerful feature representation capabilities of contrastive learning.However,the use of contrastive learning often introduces the problem of false negative examples due to category conflicts,thereby reducing the performance of contrastive clustering.To address this issue,this paper proposes a contrastive clustering algorithm based on a trend consistency constraint strategy(CCTC).By marking high-confidence sample pairs with consistent category information in the trend consistency array and using this semantic in-formation to calculate the trend constraint matrix to assist in selecting positive samples,the algorithm achieves dynamic interaction between cluster-level and instance-level sample information through the combination of instance-level and cluster-level consistency loss functions,thereby enhancing sample consistency and inter-class distinguishability.Com-pared with other contrastive clustering algorithms,this method can utilize the pseudo-label change trends in the multi-round training process to obtain sample pairs with high-confidence category trend consistency,thus improving the clus-tering performance of the model.Experiments have demonstrated the effectiveness of the algorithm.

关键词

对比聚类/对比学习/假负例/趋势一致性/伪标签/语义信息/类间区分度/掩码矩阵

Key words

contrast clustering/contrastive learning/false negatives/trend consistency/pseudo labels/semantic informa-tion/inter-class distinguishability/mask matrix

分类

信息技术与安全科学

引用本文复制引用

高小方,贾宗翰,梁吉业..基于趋势一致性学习的对比聚类算法[J].智能系统学报,2026,21(2):389-398,10.

基金项目

山西省基础研究计划项目(202203021221001). (202203021221001)

智能系统学报

1673-4785

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