An Automated Multi-Web Platform Voting Framework to Predict Misleading Information Proliferated during COVID-19 Outbreak using Ensemble Method
Deepika Varshney, Dinesh Kumar Vishwakarma

TL;DR
This paper presents an automated ensemble machine learning framework that collects data from multiple web platforms to detect and validate misleading COVID-19 information, aiding policymakers and health officials.
Contribution
It introduces a novel multi-web platform data collection system combined with an ensemble classification model for detecting misinformation during the pandemic.
Findings
The system effectively classifies misleading versus real news with promising accuracy.
The multi-platform data collection enhances the detection of misinformation.
The approach supports policy-making and health communication strategies.
Abstract
Spreading of misleading information on social web platforms has fuelled huge panic and confusion among the public regarding the Corona disease, the detection of which is of paramount importance. To address this issue, in this paper, we have developed an automated system that can collect and validate the fact from multi web-platform to decide the credibility of the content. To identify the credibility of the posted claim, probable instances/clues(titles) of news information are first gathered from various web platforms. Later, the crucial set of features is retrieved that further feeds into the ensemble-based machine learning model to classify the news as misleading or real. The four sets of features based on the content, linguistics/semantic cues, similarity, and sentiments gathered from web-platforms and voting are applied to validate the news. Finally, the combined voting decides the…
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Taxonomy
TopicsMisinformation and Its Impacts · Sentiment Analysis and Opinion Mining · Topic Modeling
