Practical Application
Practical applications of machine learning are a major focus of current research, encompassing diverse areas like weather forecasting, video compression, and content moderation. This involves developing and refining models, including active inference for continual learning, transformer-based architectures for natural language processing and image generation, and various neural networks for tasks such as classification and regression. Key challenges include improving model efficiency, addressing security vulnerabilities like backdoor attacks, and ensuring privacy and robustness in real-world deployments. These advancements are driving significant improvements in various sectors, from healthcare and finance to environmental monitoring and entertainment.
Papers
Exploring the Practicality of Federated Learning: A Survey Towards the Communication Perspective
Khiem Le, Nhan Luong-Ha, Manh Nguyen-Duc, Danh Le-Phuoc, Cuong Do, Kok-Seng Wong
FlexiDrop: Theoretical Insights and Practical Advances in Random Dropout Method on GNNs
Zhiheng Zhou, Sihao Liu, Weichen Zhao
Practical $0.385$-Approximation for Submodular Maximization Subject to a Cardinality Constraint
Murad Tukan, Loay Mualem, Moran Feldman
Continual Learning in Medical Imaging: A Survey and Practical Analysis
Mohammad Areeb Qazi, Anees Ur Rehman Hashmi, Santosh Sanjeev, Ibrahim Almakky, Numan Saeed, Camila Gonzalez, Mohammad Yaqub