Adaptive and Robust Data Poisoning Detection and Sanitization in Wearable IoT Systems using Large Language Models

arXiv — cs.LGThursday, November 6, 2025 at 5:00:00 AM

Adaptive and Robust Data Poisoning Detection and Sanitization in Wearable IoT Systems using Large Language Models

A recent study highlights the importance of adaptive and robust data poisoning detection and sanitization in wearable IoT systems, especially in healthcare and smart homes. As these technologies become more integrated into our daily lives, ensuring their reliability and integrity is crucial. The research emphasizes the need for advanced human activity recognition techniques to combat vulnerabilities in machine learning models, making our devices safer and more efficient.
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