Machine Learning Approach
Machine learning (ML) is rapidly transforming diverse scientific fields by enabling efficient data analysis and prediction. Current research focuses on applying ML algorithms, including neural networks (e.g., autoencoders, LSTMs, and gradient boosting trees), to diverse datasets for tasks such as anomaly detection, classification, and regression. These applications range from predicting physical properties and diagnosing diseases to optimizing resource allocation and forecasting events like flight delays or air pollution. The resulting insights and predictive models offer significant advancements in various scientific disciplines and practical applications, improving efficiency, accuracy, and decision-making.
Papers
PowerGAN: A Machine Learning Approach for Power Side-Channel Attack on Compute-in-Memory Accelerators
Ziyu Wang, Yuting Wu, Yongmo Park, Sangmin Yoo, Xinxin Wang, Jason K. Eshraghian, Wei D. Lu
Supervised Machine Learning for Breast Cancer Risk Factors Analysis and Survival Prediction
Khaoula Chtouki, Maryem Rhanoui, Mounia Mikram, Kamelia Amazian, Siham Yousfi