[1]孟想,王博岳,高祎菡,等.基于视觉-语言关键线索挖掘的多模态假新闻检测模型[J].智能系统学报,2026,21(1):109-119.[doi:10.11992/tis.202505007]
 MENG Xiang,WANG Boyue,GAO Yihan,et al.Visual-language key clue discovery-based multimodal fake news detection model[J].CAAI Transactions on Intelligent Systems,2026,21(1):109-119.[doi:10.11992/tis.202505007]
点击复制

基于视觉-语言关键线索挖掘的多模态假新闻检测模型

参考文献/References:
[1] VOSOUGHI S, ROY D, ARAL S. The spread of true and false news online[J]. Science, 2018, 359(6380): 1146-1151
[2] CAO Juan, QI Peng, SHENG Qiang, et al. Exploring the role of visual content in fake news detection[EB/OL]. (2020-03-11)[2025-04-20]. https://arxiv.org/abs/2003.05096.
[3] ZHANG Xichen, GHORBANI A A. An overview of online fake news: Characterization, detection, and discussion[J]. Information processing & management, 2020, 57(2): 102025
[4] ZHANG Zhenyu, ZHANG Lei, YANG Dingqi, et al. KRAN: knowledge refining attention network for recommendation[J]. ACM transactions on knowledge discovery from data, 2022, 16(2): 1-20
[5] NAN Qiong, CAO Juan, ZHU Yongchun, et al. MDFEND: multi-domain fake news detection[C]//Proceedings of the 30th ACM International Conference on Information & Knowledge Management. Virtual Event: ACM, 2021.
[6] RADFORD A, KIM J K, HALLACY C, et al. Learning transferable visual models from natural language supervision[C]//International Conference on Machine Learning. Online: ICML, 2021.
[7] WU Yang, ZHAN Pengwei, ZHANG Yunjian, et al. Multimodal fusion with co-attention networks for fake news detection[C]//Findings of the Association for Computational Linguistics, Stroudsburg: USAACL, 2021.
[8] 王安然, 袁得嵛, 潘语泉, 等. 基于超图双重注意力机制的多模态谣言检测模型[J]. 计算机科学与探索, 2025, 19(11): 3033-3045 WANG Anran, YUAN Deyu, PAN Yuquan, et al. Multimodal rumor detection model based on hypergraph dual attention mechanism[J]. Journal of frontiers of computer science and technology, 2025, 19(11): 3033-3045
[9] QIAN Shengsheng, WANG Jinguang, HU Jun, et al. Hierarchical multi-modal contextual attention network for fake news detection[C]//Proceedings of the 44th International ACM SIGIR Conference on Research and Development in Information Retrieval. Virtual Even: ACM, 2021.
[10] 赵梦凡, 张钰涛, 赵铤钊. 社交媒体假新闻检测: 基本理论、方法及研究方向[J]. 软件导刊, 2024, 23(9): 31-40. ZHAO Mengfan, ZHANG Yutao, ZHAO Tingzhao, et al. Social media fake news detection: basic theories, methods, and research directions[J]. Software guide, 23(9): 31–40.
[11] 朱枫, 张廷辉, 李鹏, 等. 基于多模态自适应融合的短视频虚假新闻检测[J]. 计算机科学, 2024, 51(11): 39-46. ZHU Feng, ZHANG Tinghui, LI Peng, et al. Multimodal adaptive fusion-based short video fake news detection[J]. Computer science, 51(11): 39-46.
[12] QI Peng, CAO Juan, LI Xirong, et al. Improving fake news detection by using an entity-enhanced framework to fuse diverse multimodal clues[C]//Proceedings of the 29th ACM International Conference on Multimedia. Chengdu: ACM, 2021.
[13] CHEN Yixuan, LI Dongsheng, ZHANG Peng, et al. Cross-modal ambiguity learning for multimodal fake news detection[C]//Proceedings of the ACM Web Conference 2022. Virtual Event: ACM, 2022.
[14] YING Qichao, HU Xiaoxiao, ZHOU Yangming, et al. Bootstrapping multi-view representations for fake news detection[C]//Proceedings of the AAAI Conference on Artificial Intelligence. Washington: AAAI, 2023.
[15] ZHENG Jiaqi, ZHANG Xi, GUO Sanchuan, et al. MFAN: multi-modal feature-enhanced attention networks for rumor detection[C]//Proceedings of the Thirty-First International Joint Conference on Artificial Intelligence. Vienna: International Joint Conferences on Artificial Intelligence Organization, 2022.
[16] 彭广川, 吴飞, 韩璐, 等. 基于跨模态交互与特征融合网络的假新闻检测方法[J]. 计算机科学, 2024, 51(11): 23-29. PENG Guangchuan, WU Fei, HAN Lu, et al. A fake news detection method based on cross-modal interaction and feature fusion network[J]. Computer science, 51(11), 23–29.
[17] 杨书新, 丁祺伟. 基于局部和全局特征聚合的虚假新闻检测方法[J]. 计算机工程与应用, 2025, 61(9): 139-147 YANG Shuxin, DING Qiwei. False news detection method based on local and global feature aggregation[J]. Computer engineering and applications, 2025, 61(9): 139-147
[18] LIU Xuannan, LI Peipei, HUANG Huaibo, et al. FKA-owl: advancing multimodal fake news detection through knowledge-augmented LVLMs[C]//Proceedings of the 32nd ACM International Conference on Multimedia. Melbourne: ACM, 2024.
[19] ZHANG Pengchuan, LI Xiujun, HU Xiaowei, et al. VinVL: revisiting visual representations in vision-language models[C]//2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition. Nashville: IEEE, 2021.
[20] 袁玥, 刘永彬, 欧阳纯萍, 等. 基于一对多关系的多模态虚假新闻检测[J]. 中文信息学报, 2023, 37(9): 131-139 YUAN Yue, LIU Yongbin, OUYANG Chunping, et al. Multimodal fake news detection based on one-to-many relationships[J]. Journal of Chinese information processing, 2023, 37(9): 131-139
[21] KIM W, SON B, KIM I. Vilt: vision-and-language transformer without convolution or region supervision[C]//International Conference on Machine Learning. Online: PMLR, 2021.
[22] WANG Peng, YANG An, MEN Rui, et al. OFA: unifying architectures, tasks, and modalities through a simple sequence-to-sequence learning framework[C]//International Conference on Machine Learning. Baltimore: PMLR, 2022.
[23] ACHIAM J, ADLER S, AGARWAL S, et al. Gpt-4 technical report[EB/OL]. (2024-03-04)[2025-04-20]. https://arxiv.org/abs/2303.08774.
[24] 周昊玮, 刘勇, 玄萍. 基于预训练和多模态融合的假新闻检测[J]. 计算机工程, 2024, 50(1): 289-295 ZHOU Haowei, LIU Yong, XUAN Ping. Fake news detection based on pretraining and multimodal fusion[J]. Computer engineering, 2024, 50(1): 289-295
[25] WANG Yaqing, MA Fenglong, JIN Zhiwei, et al. EANN: event adversarial neural networks for multi-modal fake news detection[C]//Proceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining. London: ACM, 2018.
[26] KHATTAR D, GOUD J S, GUPTA M, et al. MVAE: multimodal variational autoencoder for fake news detection[C]//The World Wide Web Conference. San Francisco: ACM, 2019.
[27] SINGHAL S, SHAH R R, CHAKRABORTY T, et al. SpotFake: a multi-modal framework for fake news detection[C]//2019 IEEE Fifth International Conference on Multimedia Big Data. Singapore: IEEE, 2019.
[28] SINGHAL S, KABRA A, SHARMA M, et al. SpotFake+: a multimodal framework for fake news detection via transfer learning (student abstract)[C]//34th AAAI Conference on Artificial Intelligence. New York: AAAI, 2020.
[29] LI Jun, BIN Yi, ZOU Jie, et al. Cross-modal consistency learning with fine-grained fusion network for multimodal fake news detection[C]//Proceedings of the 5th ACM International Conference on Multimedia in Asia. New York: Association for Computing Machinery, 2023.
[30] ZHOU Xinyi, WU Jindi, ZAFARANI R, et al. SAFE: similarity-aware multi-modal fake news detection[C]//Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing, Online: ACL, 2020.
[31] ZHENG Jiaqi, ZHANG Xi, GUO Sanchuan, et al. MFAN: multi-modal feature-enhanced attention networks for rumor detection[C]//International Joint Conference on Artificial Intelligence. Vienna: IJCAI, 2022.
[32] CHEN Yanchun, ZHANG Yuan, ZHANG Mengnan, et al. Consumption of coffee and tea with all-cause and cause-specific mortality: a prospective cohort study[J]. BMC medicine, 2022, 20(1): 449
[33] WANG Longzheng, ZHANG Chuang, XU Hongbo, et al. Cross-modal contrastive learning for multimodal fake news detection[C]//Proceedings of the 31st ACM International Conference on Multimedia. Ottawa: ACM, 2023.
[34] LI Bo, ZHANG Yuanhan, GUO Dong, et al. LLaVA-onevision: easy visual task transfer[EB/OL]. (2024-10-26)[2025-01-20]. https://arxiv.org/abs/2408.03326.
[35] LIU Yihan, OTT M, GOYAL N, et al. Roberta: a robustly optimized bert pretraining approach[EB/OL]. (2019-07-26)[2025-04-20]. https://arxiv.org/abs/1907.11692.
[36] JIN Zhiwei, CAO Juan, GUO Han, et al. Multimodal fusion with recurrent neural networks for rumor detection on microblogs[C]//Proceedings of the 25th ACM International Conference on Multimedia. Mountain View: ACM, 2017.
[37] SONG Changhe, YANG Cheng, CHEN Huimin, et al. CED: credible early detection of social media rumors[J]. IEEE transactions on knowledge and data engineering, 2021, 33(8): 3035-3047
[38] ZUBIAGA A, LIAKATA M, PROCTER R. Exploiting context for rumour detection in social media[C]//The 9th International Conference on Social Informatics. Oxford: Springer International Publishing, 2017.

备注/Memo

收稿日期:2025-5-16。
基金项目:国家自然科学基金项目(92370102).
作者简介:孟想,主要研究方向为多模态真假新闻检测。E-mail:mx2005@emails.bjut.edu.cn。;王博岳,教授,主要研究方向为跨媒体数据分析、图结构学习。主持国家自然科学基金项目等10余项,发表学术论文10余篇。E-mail:wby@bjut.edu.cn。;尹宝才,教授,主要研究方向为多媒体技术、跨媒体智能、视频编码。主持国家青年科学基金项目A类、国家自然科学基金重大项目课题等多项,发表学术论文100余篇。 E-mail:ybc@bjut.edu.cn。
通讯作者:尹宝才. E-mail:ybc@bjut.edu.cn

更新日期/Last Update: 2026-01-05
Copyright © 《 智能系统学报》 编辑部
地址:(150001)黑龙江省哈尔滨市南岗区南通大街145-1号楼 电话:0451- 82534001、82518134 邮箱:tis@vip.sina.com