Hybrid Deep Learning
Hybrid deep learning combines the strengths of different deep learning architectures (e.g., CNNs, RNNs, Transformers) and sometimes traditional statistical models (e.g., GARCH) to improve performance on various tasks. Current research focuses on applying these hybrid models to diverse fields, including medical image analysis (segmentation, diagnosis), time series prediction (financial markets, internet traffic, water quality), and natural language processing (sentiment analysis, text generation detection). This approach leads to more accurate and robust models than using single architectures alone, impacting fields ranging from healthcare and finance to environmental monitoring and transportation planning.
Papers
Informed deep hierarchical classification: a non-standard analysis inspired approach
Lorenzo Fiaschi, Marco Cococcioni
A Multi-Dataset Classification-Based Deep Learning Framework for Electronic Health Records and Predictive Analysis in Healthcare
Syed Mohd Faisal Malik, Md Tabrez Nafis, Mohd Abdul Ahad, Safdar Tanweer