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Social Media Analytics on Russia-Ukraine Cyber War with Natural Language Processing: Perspectives and Challenges

Computer Science

Social Media Analytics on Russia-Ukraine Cyber War with Natural Language Processing: Perspectives and Challenges

F. Sufi

This study by Fahim Sufi unveils how social media-based cyber intelligence shapes our understanding of Russia's cyber threats amid the ongoing Russo-Ukrainian conflict, presenting a pioneering framework and insights from a vast dataset of Twitter interactions.

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~3 min • Beginner • English
Abstract
Utilizing social media data is imperative in comprehending critical insights on the Russia-Ukraine cyber conflict due to their unparalleled capacity to provide real-time information dissemination, thereby enabling the timely tracking and analysis of cyber incidents. The vast array of user-generated content on these platforms, ranging from eyewitness accounts to multimedia evidence, serves as invaluable resources for corroborating and contextualizing cyber attacks, facilitating the attribution of malicious actors. Furthermore, social media data afford unique access to public sentiment, the propagation of propaganda, and emerging narratives, offering profound insights into the effectiveness of information operations and shaping counter-messaging strategies. However, there have been hardly any studies reported on the Russia-Ukraine cyber war harnessing social media analytics. This paper presents a comprehensive analysis of the crucial role of social-media-based cyber intelligence in understanding Russia's cyber threats during the ongoing Russo-Ukrainian conflict. This paper introduces an innovative multidimensional cyber intelligence framework and utilizes Twitter data to generate cyber intelligence reports. By leveraging advanced monitoring tools and NLP algorithms, like language detection, translation, sentiment analysis, term frequency-inverse document frequency (TF-IDF), latent Dirichlet allocation (LDA), Porter stemming, n-grams, and others, this study automatically generated cyber intelligence for Russia and Ukraine. Using 37,386 tweets originating from 30,706 users in 54 languages from 13 October 2022 to 6 April 2023, this paper reported the first detailed multilingual analysis on the Russia-Ukraine cyber crisis in four cyber dimensions (geopolitical and socioeconomic; targeted victim; psychological and societal; and national priority and concerns). It also highlights challenges faced in harnessing reliable social-media-based cyber intelligence.
Publisher
Information
Published On
Aug 31, 2023
Authors
Fahim Sufi
Tags
social media
cyber intelligence
Russia
Russo-Ukrainian conflict
NLP algorithms
Twitter data
cyber threats
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