DETECTING BOTS IN WEB APPLICATIONS BASED ON USER BEHAVIOR USING MACHINE LEARNING

Authors

  • Nodir Zaynalov
  • Faxriddin Maxmadiyorov

DOI:

https://doi.org/10.47390/ts-v3i5y2025N2

Keywords:

bot detection, machine learning, user behavior analysis, ONNX model, real-time analysis, CAPTCHA alternatives.

Abstract

This article proposes an innovative machine learning (ML)-based approach to distinguish between users and bots in web applications. Due to the declining effectiveness and user inconvenience of traditional methods (e.g., CAPTCHA), the authors suggest detecting bots by analyzing interactive user behavior, such as mouse movements, keyboard inputs, scrolling patterns, and other parameters.

The study employs a lightweight neural network model in ONNX format, demonstrating high accuracy (93.5%) and low error rates in real-time bot detection. Key advantages of the model include minimal impact on user experience, fast processing (<50ms), and adaptability to various devices

References

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Submitted

2025-08-10

Published

2025-08-11

How to Cite

Zaynalov , N., & Maxmadiyorov, F. (2025). DETECTING BOTS IN WEB APPLICATIONS BASED ON USER BEHAVIOR USING MACHINE LEARNING. Techscience Uz - Topical Issues of Technical Sciences, 3(5), 11–16. https://doi.org/10.47390/ts-v3i5y2025N2

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