TWEET BASED BOT DETECTION USING BIG DATA ANALYTICS

Authors

  • Mr T. Kankaiah Author
  • K. Sushma Sri Author
  • M. Akshitha Author

Abstract

Twitter, a leading micro-blogging platform with millions of users worldwide, has become a prime target for various malicious activities, including the dissemination of rumors, phishing attempts, and malware distribution. Among these threats, the proliferation of tweet-based botnets poses a significant risk, capable of orchestrating large-scale attacks and manipulative campaigns. To combat such threats effectively, the utilization of big data analytics techniques, particularly shallow and deep learning methodologies, has emerged as a viable solution for accurately distinguishing between human-operated accounts and bot-generated tweets. In this paper, we comprehensively review existing techniques and propose a taxonomy to categorize the state-of-the-art tweet-based bot detection methodologies. Furthermore, we delve into the intricacies of shallow and deep learning approaches employed for tweet-based bot detection, elucidating their respective performance outcomes. Lastly, we highlight the persistent challenges and unresolved issues within the domain of tweet-based bot detection, underscoring the importance of ongoing research efforts to mitigate emerging threats effectively.

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Published

2025-11-22

How to Cite

TWEET BASED BOT DETECTION USING BIG DATA ANALYTICS. (2025). Stanford & Oxbridge Journal of Social Science and Cognition Insight (SOJ-SSCI), 5(2), 16-23. https://stanfordgroup.org/index.php/SSCI/article/view/89