Data Driven Approach
Data-driven approaches leverage large datasets and computational power to solve complex problems across diverse scientific and engineering domains. Current research focuses on developing and applying machine learning models, including neural networks (e.g., deep learning, recurrent neural networks, transformers), ensemble methods, and Gaussian processes, to extract insights, make predictions, and improve decision-making. This methodology is significantly impacting various fields, from healthcare and environmental monitoring to materials science and engineering, by enabling more efficient analysis, improved modeling accuracy, and the development of novel solutions to previously intractable problems. The emphasis is on creating robust, interpretable, and efficient data-driven systems that can handle noisy data and adapt to changing conditions.
Papers
Predicting Parking Availability in Singapore with Cross-Domain Data: A New Dataset and A Data-Driven Approach
Huaiwu Zhang, Yutong Xia, Siru Zhong, Kun Wang, Zekun Tong, Qingsong Wen, Roger Zimmermann, Yuxuan Liang
Data-driven Machinery Fault Detection: A Comprehensive Review
Dhiraj Neupane, Mohamed Reda Bouadjenek, Richard Dazeley, Sunil Aryal