Influence of 3D printing on Mechanical Qualities in Additive Manufacturing of ASA structure
Keywords:
Privacy-preserving, AI, Social media, Data analysis, Differential privacyAbstract
In recent years, the proliferation of social media platforms has led to an exponential growth in user-generated data, presenting both opportunities and challenges for data analysis. This paper explores the intersection of privacy concerns and artificial intelligence (AI) techniques in the context of social media data analysis. Specifically, it investigates methods and technologies aimed at preserving user privacy while enabling effective AI-driven insights from social media data. The paper reviews various privacy-preserving techniques such as differential privacy, federated learning, and homomorphic encryption, highlighting their application in mitigating privacy risks associated with data aggregation and analysis in social media contexts. Additionally, it discusses the implications of privacy regulations such as the GDPR and CCPA on AI-driven data analysis practices. Through a critical examination of current research and technological advancements, this paper aims to provide a comprehensive understanding of the evolving landscape of privacy-preserving AI in social media data analysis. It concludes with recommendations for future research directions and ethical considerations necessary for the responsible deployment of AI technologies in this domain.
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Copyright (c) 2023 International Journal of Open Publication and Exploration, ISSN: 3006-2853
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