Litcius/Paper detail

SCATE

Tanmay Sachan, Nikhil Pinnaparaju, Manish Gupta, Vasudeva Varma

202116 citationsDOI

Abstract

Social media platforms have democratized the publication process resulting into easy and viral propagation of information. Oftentimes this misinformation is accompanied by misleading or doctored images that quickly circulate across the internet and reach many unsuspecting users. Several manual as well as automated efforts have been undertaken in the past to solve this critical problem. While manual efforts cannot keep up with the rate at which this content is churned out, many automated approaches only leverage concatenation (of the image and text representations) thereby failing to build effective crossmodal embeddings. Architectures like this fail in many cases because the text or image doesn't need to be false for the corresponding text, image pair to be misinformation. While some recent work attempts to use attention techniques to compute a crossmodal representation using pretrained text and image embeddings, we show a more effective approach towards utilizing such pretrained embeddings to build richer representations that can be classified better. This involves several challenges like how to handle text variations on Twitter and Weibo, how to encode the image information and how to leverage the text and image encodings together effectively. Our architecture, SCATE (Shared Cross Attention Transformer Encoders), leverages deep convolutional neural networks and transformer-based methods to encode image and text information utilizing crossmodal attention and shared layers for the two modalities. Our experiments with three popular benchmark datasets (Twitter, WeiboA and WeiboB) show that our proposed methods outperform the state-of-the-art methods by approximately three percentage points on all three datasets.

Topics & Concepts

Computer scienceConvolutional neural networkLeverage (statistics)CrossmodalENCODEMisinformationArtificial intelligenceInformation retrievalPoolingSocial mediaEncoderNoisy text analyticsMachine learningWorld Wide WebAutomatic summarizationText graphGeneNeuroscienceComputer securityBiochemistryBiologyVisual perceptionChemistryPerceptionOperating systemMultimodal Machine Learning ApplicationsMisinformation and Its ImpactsTopic Modeling