一种融合动态语义与图结构的对比学习谣言检测方法
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1西南交通大学经济管理学院, 成都 610031;2西南交通大学计算机与人工智能学院, 成都 611756

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基金项目:

国家自然科学基金(62276217,62402424);中央高校基本科研业务费项目(2682024KJ005,2682024ZTPY021)。


Contrastive Learning Approach for Rumor Detection via Fusion of Dynamic Semantics and Graph Structure
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Affiliation:

1School of Economics and Management, Southwest Jiaotong University, Chengdu 610031, China;2School of Computing and Artificial Intelligence, Southwest Jiaotong University, Chengdu 611756, China

Fund Project:

National Natural Science Foundation of China (Nos.62276217,62402424); Fundamental Research Funds for the Central Universities (Nos.2682024KJ005,2682024ZTPY021).

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    摘要:

    随着社交媒体的蓬勃发展,谣言在大规模用户的线上互动中迅速扩散,严重干扰公众认知和社会秩序。现有检测方法在建模文本动态语义演化和复杂传播结构方面仍存在局限性,同时对易混淆类别的判别能力也有待提升。基于此,本文提出一种融合动态语义与图结构的对比学习谣言检测(Dynamic semantic and graph feature fusion for contrastive rumor detection, DySGCL)方法。在文本内容方面,采用层级 Transformer 提取用户历史帖子的全局语义表示,并结合时序卷积强化局部语义感知能力,以识别历史发帖的动态语义演化。在图结构方面,采用边移除策略模拟对抗性干扰,并结合图注意力网络(Graph attention network,GAT)自适应地突出核心交互关系。最后,联合自监督与有监督的对比学习机制,提升模型对易混淆类别的判别能力。实验结果表明,DySGCL 在公开数据集Twitter15、Twitter16上的准确率较基准方法分别提升了1.8%和2.0%,验证了其在谣言检测任务中的有效性。

    Abstract:

    The rapid growth of social media has enabled rumors to spread swiftly through extensive online interactions, thereby significantly undermining public trust and destabilizing social order. However, existing rumor detection methods face notable limitations in modeling the dynamic semantic evolution of text and accurately capturing complex propagation patterns, and they often struggle to distinguish between ambiguous rumor categories. To address these challenges, we propose DySGCL (Dynamic semantic and graph feature fusion for contrastive rumor detection), a novel contrastive learning framework that fuses dynamic semantic representations with graph-based structural features. Specifically, we employ a hierarchical Transformer to extract global semantic embeddings from users’ past posts, while a temporal convolutional module improves sensitivity to fine-grained semantic shifts. For structural modeling, we first simulate adversarial perturbations via edge removal, then leverage a graph attention network (GAT) to highlight critical interaction pathways in the propagation network. Finally, an integrated contrastive objective combining self-supervised and supervised signals further enhances the model’s discriminative power. Experiments on the Twitter15 and Twitter16 benchmarks show that DySGCL outperforms state-of-the-art baselines by 1.8% and 2.0% in accuracy, respectively, validating its effectiveness in dynamic and complex rumor detection scenarios.Highlights:1. A dynamic semantic and graph-structure fusion framework is proposed for rumor detection.2. A hierarchical Transformer and temporal convolution are integrated to capture semantic evolution in users’ historical posts.3. Self-supervised and supervised contrastive learning mechanisms are jointly used to improve the discrimination of ambiguous rumor categories.

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徐培淇,刘盾,李天瑞.一种融合动态语义与图结构的对比学习谣言检测方法[J].数据采集与处理,2026,(3):854-868

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  • 收稿日期:2025-06-15
  • 最后修改日期:2025-07-02
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  • 在线发布日期: 2026-06-10