Comprehensive Study
Comprehensive studies across diverse fields are increasingly leveraging machine learning and deep learning models to address complex problems. Current research focuses on improving model performance and robustness, exploring various architectures like convolutional neural networks (CNNs), transformers, and graph neural networks (GNNs), and investigating techniques such as knowledge distillation, transfer learning, and quantization. These advancements have significant implications for various applications, including medical diagnosis, natural language processing, and image analysis, by improving accuracy, efficiency, and reliability. Furthermore, research emphasizes addressing challenges like class imbalance, adversarial attacks, and bias in model outputs.
Papers
Multispectral Image Segmentation in Agriculture: A Comprehensive Study on Fusion Approaches
Nuno Cunha, Tiago Barros, Mário Reis, Tiago Marta, Cristiano Premebida, Urbano J. Nunes
A Comprehensive Study of Machine Learning Techniques for Log-Based Anomaly Detection
Shan Ali, Chaima Boufaied, Domenico Bianculli, Paula Branco, Lionel Briand