Deep Learning Model
Deep learning models are complex computational systems designed to learn patterns from data, achieving high accuracy in various tasks like image classification, natural language processing, and time series forecasting. Current research emphasizes improving model efficiency (e.g., through parameter reduction and optimized training algorithms), robustness (e.g., against adversarial attacks and noisy data), and interpretability (e.g., via feature attribution and visualization techniques), often employing architectures such as convolutional neural networks (CNNs), recurrent neural networks (RNNs, including LSTMs and GRUs), and transformers. These advancements are driving significant impact across diverse fields, from medical diagnosis and environmental monitoring to industrial automation and personalized medicine.
Papers
AI for Handball: predicting and explaining the 2024 Olympic Games tournament with Deep Learning and Large Language Models
Florian Felice
Model editing for distribution shifts in uranium oxide morphological analysis
Davis Brown, Cody Nizinski, Madelyn Shapiro, Corey Fallon, Tianzhixi Yin, Henry Kvinge, Jonathan H. Tu
Comprehensive Study on Performance Evaluation and Optimization of Model Compression: Bridging Traditional Deep Learning and Large Language Models
Aayush Saxena, Arit Kumar Bishwas, Ayush Ashok Mishra, Ryan Armstrong
Deep Learning for Economists
Melissa Dell
Evaluation of deep learning models for Australian climate extremes: prediction of streamflow and floods
Siddharth Khedkar, R. Willem Vervoort, Rohitash Chandra
Self-supervised transformer-based pre-training method with General Plant Infection dataset
Zhengle Wang, Ruifeng Wang, Minjuan Wang, Tianyun Lai, Man Zhang
Early Detection of Coffee Leaf Rust Through Convolutional Neural Networks Trained on Low-Resolution Images
Angelly Cabrera, Kleanthis Avramidis, Shrikanth Narayanan
Frontiers of Deep Learning: From Novel Application to Real-World Deployment
Rui Xie
A3Rank: Augmentation Alignment Analysis for Prioritizing Overconfident Failing Samples for Deep Learning Models
Zhengyuan Wei, Haipeng Wang, Qilin Zhou, W. K. Chan
Refining Tuberculosis Detection in CXR Imaging: Addressing Bias in Deep Neural Networks via Interpretability
Özgür Acar Güler, Manuel Günther, André Anjos