4.8 Article

Fuzzy Detection System for Rumors Through Explainable Adaptive Learning

Journal

IEEE TRANSACTIONS ON FUZZY SYSTEMS
Volume 29, Issue 12, Pages 3650-3664

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TFUZZ.2021.3052109

Keywords

Feature extraction; Encoding; Training; Electronic mail; Convolution; Uncertainty; Indexes; Cyberspace security; fuzzy detection system; generative adversarial learning (GAL); graph embedding (GE)

Funding

  1. Chongqing Natural Science Foundation of China [cstc2019jcyj-msxmX0747]
  2. State Language Commission Research Program of China [YB135-121]
  3. Science and Technology Research Program of Chongqing Municipal Education Commission [KJQN202000805]
  4. Japan Society for the Promotion of Science (JSPS) [JP18K18044]
  5. High-level Talents/Teams Research Project of Chongqing Technology and Business University [1953013, ZDPTTD201917, KFJJ2018071]

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This article proposes a system for fuzzy rumor detection through explainable adaptive learning, using a graph embedding-based generative adversarial network (Graph-GAN) model. The two-stage scheme not only solves the fuzzy rumor detection under unsupervised scenarios, but also improves robustness of the unsupervised training. Empirically, the results of the Graph-GAN show a proper performance, exceeding baselines by 5-10% on average when compared with seven benchmark methods in terms of four metrics.
Nowadays, rumor spreading has gradually evolved into a kind of organized behaviors, accompanied with strong uncertainty and fuzziness. However, existing fuzzy detection techniques for rumors focused their attention on supervised scenarios that require expert samples with labels for training. Thus, they are not able to well handle the unsupervised scenarios where labels are unavailable. To bridge such gap, this article proposed a fuzzy detection system for rumors through explainable adaptive learning. Specifically, its core is a graph embedding-based generative adversarial network (Graph-GAN) model. First of all, it constructs fine-grained feature spaces via graph-level encoding. Furthermore, it introduces continuous adversarial training between a generator and a discriminator for unsupervised decoding. The two-stage scheme not only solves the fuzzy rumor detection under unsupervised scenarios, but also improves robustness of the unsupervised training. Empirically, a set of experiments are carried out based on three real-world datasets. Compared with seven benchmark methods in terms of four metrics, the results of the Graph-GAN reveal a proper performance, which averagely exceeds baselines by 5-10%.

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