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Keywords: Privacy preservation
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Journal Articles
A bibliometric study toward quantitative research assessment of security of machine learning
Available to Purchase
Journal:
Information Discovery and Delivery
Information Discovery and Delivery (2025) 53 (4): 481–498.
Published: 01 November 2024
... the models to clean them from poisoning effects. Differential privacy is yet another popular mechanism to secure models from inference and inversion attacks. However, it has limitations of complex computing. Adversarial machine learning Cyber threats Privacy preservation Secure machine learning...
