What sets Verified Users apart? Insights, Analysis and Prediction of Verified Users on Twitter
Indraneil Paul, Abhinav Khattar, Shaan Chopra, Ponnurangam Kumaraguru,, Manish Gupta

TL;DR
This paper investigates the features that distinguish verified Twitter users from non-verified ones, demonstrating that verification status can be reliably predicted using profile metadata and content features with high accuracy.
Contribution
It is the first study to analyze and classify Twitter verification status based on profile and tweet content, revealing key predictors like list memberships and language style.
Findings
Verification status prediction achieves AUC > 99%
Number of public list memberships is a key predictor
Presence of neutral sentiment and authoritative language influence verification
Abstract
Social network and publishing platforms, such as Twitter, support the concept of a secret proprietary verification process, for handles they deem worthy of platform-wide public interest. In line with significant prior work which suggests that possessing such a status symbolizes enhanced credibility in the eyes of the platform audience, a verified badge is clearly coveted among public figures and brands. What are less obvious are the inner workings of the verification process and what being verified represents. This lack of clarity, coupled with the flak that Twitter received by extending aforementioned status to political extremists in 2017, backed Twitter into publicly admitting that the process and what the status represented needed to be rethought. With this in mind, we seek to unravel the aspects of a user's profile which likely engender or preclude verification. The aim of the…
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Taxonomy
TopicsSpam and Phishing Detection · Misinformation and Its Impacts · Hate Speech and Cyberbullying Detection
