SIAICLCRLGFeb 2, 2022

A Longitudinal Dataset of Twitter ISIS Users

arXiv:2202.00878v1
Originality Synthesis-oriented
AI Analysis

This work addresses the need for detailed individual account data in studying ISIS online activities, offering a foundation for future research in this domain, though it is incremental in building on prior studies.

The researchers tackled the problem of analyzing individual ISIS-affiliated Twitter accounts by presenting a large longitudinal dataset of tweets from suspected users, providing descriptive statistics and preliminary analyses to offer deeper insights into their activities.

We present a large longitudinal dataset of tweets from two sets of users that are suspected to be affiliated with ISIS. These sets of users are identified based on a prior study and a campaign aimed at shutting down ISIS Twitter accounts. These users have engaged with known ISIS accounts at least once during 2014-2015 and are still active as of 2021. Some of them have directly supported the ISIS users and their tweets by retweeting them, and some of the users that have quoted tweets of ISIS, have uncertain connections to ISIS seed accounts. This study and the dataset represent a unique approach to analyzing ISIS data. Although much research exists on ISIS online activities, few studies have focused on individual accounts. Our approach to validating accounts as well as developing a framework for differentiating accounts' functionality (e.g., propaganda versus operational planning) offers a foundation for future research. We perform some descriptive statistics and preliminary analyses on our collected data to provide deeper insight and highlight the significance and practicality of such analyses. We further discuss several cross-disciplinary potential use cases and research directions.

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