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MVAE: Multimodal Variational Autoencoder for Fake News DetectionAuthors: Dhruv Khattar,Jaipal Singh Goud,Manish Gupta,Vasudeva Varma Conference: The Web Conference-2019 (The Web Conference-2019 2019) Location San Francisco Date: 2019-05-13 Report no: IIIT/TR/2019/21 AbstractIn recent times, fake news and misinformation have had a disruptive and adverse impact on our lives. Given the prominence of microblogging networks as a source of news for most individuals, fake news now spreads at a faster pace and has a more profound impact than ever before. This makes detection of fake news an extremely important challenge. Fake news articles, just like genuine news articles, leverage multimedia content to manipulate user opinions but spread misinformation. A shortcoming of the current approaches for the detection of fake news is their inability to learn a shared representation of multimodal (textual + visual) information. We propose an end-to-end network, Multimodal Variational Autoencoder (MVAE), which uses a bimodal variational autoencoder coupled with a binary classifier for the task of fake news detection. The model consists of three main components, an encoder, a decoder and a fake news detector module. The variational autoencoder is capable of learning probabilistic latent variable models by optimizing a bound on the marginal likelihood of the observed data. The fake news detector then utilizes the multimodal representations obtained from the bimodal variational autoencoder to classify posts as fake or not. We conduct extensive experiments on two standard fake news datasets collected from popular microblogging websites: Weibo and Twitter. The experimental results show that across the two datasets, on average our model outperforms state-of-the-art methods by margins as large as ∼6% in accuracy and ∼5% in F 1 scores. Full paper: pdf Centre for Search and Information Extraction Lab |
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