Recent Advance
Recent advancements in various machine learning subfields are significantly impacting diverse scientific and engineering domains. Current research focuses on improving model efficiency and interpretability across applications like robotics process automation, protein structure prediction, and communication systems, often leveraging large language models (LLMs) and deep learning architectures. These improvements are driving progress in areas such as natural language processing, medical image analysis, and computational fluid dynamics, leading to more accurate, efficient, and reliable systems. The resulting advancements hold significant potential for improving healthcare, optimizing industrial processes, and accelerating scientific discovery.
Papers
Recent Advances in Bayesian Optimization
Xilu Wang, Yaochu Jin, Sebastian Schmitt, Markus Olhofer
Recent Advances for Quantum Neural Networks in Generative Learning
Jinkai Tian, Xiaoyu Sun, Yuxuan Du, Shanshan Zhao, Qing Liu, Kaining Zhang, Wei Yi, Wanrong Huang, Chaoyue Wang, Xingyao Wu, Min-Hsiu Hsieh, Tongliang Liu, Wenjing Yang, Dacheng Tao
Explainability in Mechanism Design: Recent Advances and the Road Ahead
Sharadhi Alape Suryanarayana, David Sarne, Sarit Kraus