The study aims to address the challenges of Bangla fake news detection using deep learning models, including the bidirectional Gated Recurrent Unit (GRU), and achieve high accuracy in identifying authentic and fake information.
FakeNewsGPT4 utilizes LVLMs and forgery-specific knowledge to improve cross-domain performance in detecting multimodal fake news.
TT-BLIP introduces a novel model for fake news detection by integrating text, image, and image-text features using advanced fusion techniques.
TT-BLIP model outperforms state-of-the-art models in fake news detection by integrating text, image, and multimodal features.
異なるドメインのデータを活用して、偽ニュースの検出を改善するための新しいフレームワークであるDPODが提案されました。
LVLMs augmented with forgery-specific knowledge improve cross-domain performance in multimodal fake news detection.
FakeNewsGPT4 proposes a novel framework that leverages world knowledge from LVLMs and forgery-specific knowledge to enhance multimodal fake news detection.