Transformer Megatron Decepticons
Transformer models are being extensively investigated for various sequence processing tasks, moving beyond natural language processing to encompass time series forecasting, image recognition, and scientific computing applications like solving partial differential equations. Current research focuses on improving efficiency (e.g., through mixed-precision quantization and optimized architectures), enhancing generalization capabilities (particularly to longer sequences), and understanding the underlying mechanisms of in-context learning. These advancements have significant implications for diverse fields, improving the accuracy and efficiency of numerous applications while simultaneously deepening our theoretical understanding of these powerful models.
Papers
Multimodal Detection of Social Spambots in Twitter using Transformers
Loukas Ilias, Ioannis Michail Kazelidis, Dimitris Askounis
TransGNN: Harnessing the Collaborative Power of Transformers and Graph Neural Networks for Recommender Systems
Peiyan Zhang, Yuchen Yan, Xi Zhang, Chaozhuo Li, Senzhang Wang, Feiran Huang, Sunghun Kim