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The rapid dissemination of unverified information through social platforms like Twitter poses considerable dangers to societal stability. Identifying real versus fake claims is challenging, and previous work on rumor detection methods often fails to effectively capture propagation structure features. These methods also often overlook the presence of comments irrelevant to the discussion topic of the source post. To address this, we introduce a novel approach: the Structure-Aware Multilevel Graph Attention Network (SAMGAT) for rumor classification. SAMGAT employs a dynamic attention mechanism that blends GATv2 and dot-product attention to capture the contextual relationships between posts, allowing for varying attention scores based on the stance of the central node. The model incorporates a structure-aware attention mechanism that learns attention weights that can indicate the existence of edges, effectively reflecting the propagation structure of rumors. Moreover, SAMGAT incorporates a top-k attention filtering mechanism to select the most relevant neighboring nodes, enhancing its ability to focus on the key structural features of rumor propagation. Furthermore, SAMGAT includes a claim-guided attention pooling mechanism with a thresholding step to focus on the most informative posts when constructing the event representation. Experimental results on benchmark datasets demonstrate that SAMGAT outperforms state-of-the-art methods in identifying rumors and improves the effectiveness of early rumor detection.
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http://dx.doi.org/10.7717/peerj-cs.2200 | DOI Listing |
Sci Rep
August 2025
School of Intelligent Manufacturing Engineering, Shanxi University of Electronic Science and Technology, Linfen, 041000, Shanxi Province, China.
Early rumor detection on social media requires joint modeling of semantic content and dynamic propagation patterns, a critical yet challenging task in text mining. While existing methods often focus exclusively on either contextual information or user behavior, we propose MLI-GRA, a heterogeneous graph reconstruction approach that integrates both through multi-level interactive fusion. We first employ a graph auto-encoder framework to integrate semantic information and propagation patterns with the multiple graph convolutional network (GCN) and the graph reconstruction module.
View Article and Find Full Text PDFSci Rep
August 2025
Department of Computer Science and Engineering, Manipal Institute of Technology, Manipal Academy of Higher Education, Manipal, 576104, Karnataka, India.
Complex networks play a vital role in various real-world systems, including marketing, information dissemination, transportation, biological systems, and epidemic modeling. Identifying influential nodes within these networks is essential for optimizing spreading processes, controlling rumors, and preventing disease outbreaks. However, existing state-of-the-art methods for identifying influential nodes face notable limitations.
View Article and Find Full Text PDFSci Rep
August 2025
Department of Mathematics Education, Farhangian University, Tehran, P.O. Box, 14665-889, Tehran, Iran.
This paper develops an SEIR-type control model for an optimal control problem (OCP) related to rumor propagation (RP), aiming to address three control strategies designed to reduce the amount of false information and defrauders in online social networks (OSNs). We explore an OCP to analyze the behavior of uninformed individuals against false rumors, the effectiveness of filtering information propagation within OSNs, and the implementation of punitive measures against defrauders. To solve this OCP, we employ a hybrid discretization-metaheuristic approach that integrates the collocation method to transform the OCP of the RP model into a nonlinear programming (NLP) with a Botox optimizer for the NLP to detect the optimal control, state variables, and objective functional.
View Article and Find Full Text PDFBehav Genet
July 2025
Department of Psychology, University of Southern California, Los Angeles, CA, USA.
Previous studies robustly link childhood peer victimization experience to the timing of substance use initiation. However, no study has investigated the contributions of genetic and environmental factors to this link. The current study focused on a sample of 779 twin pairs followed from age 9-10 to 19-20, which is racially/ethnically and socioeconomically representative of the greater Los Angeles area.
View Article and Find Full Text PDFNeural Netw
October 2025
Knowledge Graph Group, Alan Turing Institute, The University of Edinburgh, 57 George Square, Edinburgh, EH8 9JU, UK. Electronic address:
Multi-modal emergency rumors are spreading in the current digital era, causing significant disruptions and negative impacts. Most existing methods focus on exploring rumor detection using individual small language models (SLMs) or large language models (LLMs), achieving a certain degree of success but with underlying issues. Approaches based on SLMs have reached a bottleneck due to their limited knowledge and capacity.
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