SIAILGJun 6, 2023

Russo-Ukrainian War: Prediction and explanation of Twitter suspension

arXiv:2306.03502v24 citationsh-index: 49
Originality Synthesis-oriented
AI Analysis

It addresses the problem of understanding suspension mechanisms on social media for platform moderators and researchers, but is incremental as it applies existing methods to a new dataset.

This study analyzed Twitter account suspensions during the Russo-Ukrainian War by examining 107.7 million tweets from 9.8 million users, revealing scam campaigns exploiting the conflict for cryptocurrency fraud and spam.

On 24 February 2022, Russia invaded Ukraine, starting what is now known as the Russo-Ukrainian War, initiating an online discourse on social media. Twitter as one of the most popular SNs, with an open and democratic character, enables a transparent discussion among its large user base. Unfortunately, this often leads to Twitter's policy violations, propaganda, abusive actions, civil integrity violation, and consequently to user accounts' suspension and deletion. This study focuses on the Twitter suspension mechanism and the analysis of shared content and features of the user accounts that may lead to this. Toward this goal, we have obtained a dataset containing 107.7M tweets, originating from 9.8 million users, using Twitter API. We extract the categories of shared content of the suspended accounts and explain their characteristics, through the extraction of text embeddings in junction with cosine similarity clustering. Our results reveal scam campaigns taking advantage of trending topics regarding the Russia-Ukrainian conflict for Bitcoin and Ethereum fraud, spam, and advertisement campaigns. Additionally, we apply a machine learning methodology including a SHapley Additive explainability model to understand and explain how user accounts get suspended.

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