Privacy Preservation
Privacy preservation in machine learning focuses on enabling collaborative model training and deployment without compromising sensitive data. Current research emphasizes techniques like federated learning, differential privacy, and generative models (e.g., GANs) to achieve this, often employing architectures such as deep neural networks and large language models. These methods aim to balance the utility of trained models with robust privacy guarantees against various attacks, impacting fields ranging from healthcare and finance to social media and IoT applications. The ongoing challenge lies in finding optimal trade-offs between privacy protection, model accuracy, and computational efficiency.
Papers
AnonyNoise: Anonymizing Event Data with Smart Noise to Outsmart Re-Identification and Preserve Privacy
Katharina Bendig, René Schuster, Nicole Thiemer, Karen Joisten, Didier Stricker
DP-CDA: An Algorithm for Enhanced Privacy Preservation in Dataset Synthesis Through Randomized Mixing
Utsab Saha, Tanvir Muntakim Tonoy, Hafiz Imtiaz