연구 분야: Artificial Intelligence
학회: 2024 IEEE 2nd International Conference on Innovations in High Speed Communication and Signal Processing (IHCSP)
Machine learning has enabled innovative usage in numerous fields. These systems are vulnerable to hostile assaults. Small intentional alterations to misclassify data constitute a major security risk. We examine three solutions: "Self-Supervised Adversarial Defense," "Adversarial Mixup," and "Secure and Self-Supervised Learning." These strategies safeguard and protect machine learning models from other computers. We start our study with the theory underlying these approaches and how they are employed in machine learning. A detailed experimental evaluation utilizing a real-world dataset with difficult adversarial situations is shown. These approaches are tested using accuracy, precision, memory, F1 score, and ROC AUC. Results are certain. All indicators suggest that new methods outperform old ones. "Self-Supervised Adversarial Defense" is the most exact and precise, but "Adversarial Mixup" and "Secure and Self-Supervised Learning" are also useful, especially for memory. The ROC AUC values also demonstrate that the recommended approaches can distinguish positive and negative classes, which is crucial in binary classification problems. Finally, our work indicates that these strategies can make machine learning models safer and more resilient in harmful conditions. This study reveals how adversarial perturbations and self-supervised learning might solve the crucial challenge of adversarial assaults. These strategies can make machine learning systems safer, which might impact hacking, healthcare, and self-driving systems.
| 발행 연도 | 2024년 |
|---|---|
| 인용수 | 87 |
| 출판 국가 | Andorra, India |
| 사이트 | IEEE |
| 좋아요 수 | 0 |