Level Representation
Level representation in machine learning focuses on developing models that effectively capture information at multiple scales or levels of abstraction, improving performance on various tasks. Current research emphasizes the integration of multi-level features through techniques like hierarchical architectures (e.g., incorporating low-level and high-level features), multimodal fusion (combining information from different data types), and advanced attention mechanisms to weigh the importance of different levels. This work is significant because improved level representation leads to more robust and accurate models across diverse applications, including drug discovery, materials science, and image analysis.
Papers
Uni-ELF: A Multi-Level Representation Learning Framework for Electrolyte Formulation Design
Boshen Zeng, Sian Chen, Xinxin Liu, Changhong Chen, Bin Deng, Xiaoxu Wang, Zhifeng Gao, Yuzhi Zhang, Weinan E, Linfeng Zhang
Learning to Adapt Category Consistent Meta-Feature of CLIP for Few-Shot Classification
Jiaying Shi, Xuetong Xue, Shenghui Xu