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VRoC: Variational Autoencoder-aided Multi-task Rumor Classifier Based on Text

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TLDR
The proposed VRoC, a tweet-level variational autoencoder-based rumor classification system, consistently outperforms several state-of-the-art techniques, on both observed and unobserved rumors, by up to 26.9%, in terms of macro-F1 scores.
Abstract
Social media became popular and percolated almost all aspects of our daily lives. While online posting proves very convenient for individual users, it also fosters fast-spreading of various rumors. The rapid and wide percolation of rumors can cause persistent adverse or detrimental impacts. Therefore, researchers invest great efforts on reducing the negative impacts of rumors. Towards this end, the rumor classification system aims to to detect, track, and verify rumors in social media. Such systems typically include four components: (i) a rumor detector, (ii) a rumor tracker, (iii) a stance classifier, and (iv) a veracity classifier. In order to improve the state-of-the-art in rumor detection, tracking, and verification, we propose VRoC, a tweet-level variational autoencoder-based rumor classification system. VRoC consists of a co-train engine that trains variational autoencoders (VAEs) and rumor classification components. The co-train engine helps the VAEs to tune their latent representations to be classifier-friendly. We also show that VRoC is able to classify unseen rumors with high levels of accuracy. For the PHEME dataset, VRoC consistently outperforms several state-of-the-art techniques, on both observed and unobserved rumors, by up to 26.9%, in terms of macro-F1 scores.

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Citations
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Temporally evolving graph neural network for fake news detection

TL;DR: Wang et al. as discussed by the authors introduced a novel temporal propagation-based fake news detection framework, which could fuse structure, content semantics, and temporal information, and model temporal evolution patterns of real-world news as the graph evolving under the setting of dynamic diffusion networks.
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The Surprising Performance of Simple Baselines for Misinformation Detection

TL;DR: The authors examined the performance of a broad set of modern transformer-based language models and showed that with basic fine-tuning, these models are competitive with and can even significantly outperform recently proposed state-of-the-art methods.
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Rumor, misinformation among web: A contemporary review of rumor detection techniques during different web waves

TL;DR: A holistic view of different web waves from web 1.0 to web 5.0 is provided and taxonomy describes various malicious information contents at different stages to make online information more trustworthy for knowledge sharing and decision‐making purposes.
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Multi-view learning with distinguishable feature fusion for rumor detection

TL;DR: Zhang et al. as mentioned in this paper proposed a user-aspect multi-view learning model for rumor detection, which learns the representation of different views of the users who engaged in spreading the tweet, and fuse the learned features through a distinguishable fusion mechanism.
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