Privacy concerns in social media UGC communities: Understanding user behavior sentiments in complex networks
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2023
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Springer
Resumen
In a digital ecosystem where large amounts of data related to user actions are generated every day, important concerns have emerged about the collection, management,
and analysis of these data and, according, about user privacy. In recent years, users
have been accustomed to organizing in and relying on digital communities to support and achieve their goals. In this context, the present study aims to identify the
main privacy concerns in user communities on social media, and how these afect
users’ online behavior. In order to better understand online communities in social
networks, privacy concerns, and their connection to user behavior, we developed an
innovative and original methodology that combines elements of machine learning as
a technical contribution. First, a complex network visualization algorithm known as
ForceAtlas2 was used through the open-source software Gephi to visually identify
the nodes that form the main communities belonging to the sample of UGC collected from Twitter. Then, a sentiment analysis was applied with Textblob, an algorithm that works with machine learning on which experiments were developed with
support vector classifer (SVC), multinomial naïve Bayes (MNB), logistic regression (LR), random forest, and classifer (RFC) under the theoretical frameworks of
computer-aided text analysis (CATA) and natural language processing (NLP). As a
result, a total of 11 user communities were identifed: the positive protection software and cybersecurity and eCommerce, the negative privacy settings, personal
information and social engineering, and the neutral privacy concerns, hacking, false
information, impersonation and cookies data. The paper concludes with a discussion of the results and their relation to user behavior in digital environments and an
outline valuable and practical insights into some techniques and challenges related
to users’ personal data.
Descripción
Open Access funding provided thanks to the CRUE-CSIC agreement with Springer Nature. “None”. This study did not receive any funding.
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Citación
Saura, J.R., Palacios-Marqués, D. & Ribeiro-Soriano, D. Privacy concerns in social media UGC communities: Understanding user behavior sentiments in complex networks. Inf Syst E-Bus Manage (2023). https://doi.org/10.1007/s10257-023-00631-5
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