Semantics Surfaced
Semantics surfaced research focuses on extracting and utilizing semantic information from various data sources, including text, images, and sensor data, to improve the performance and interpretability of machine learning models. Current research employs diverse approaches, such as transformer-based encoders, vision-language models, and hypergraph neural networks, to represent and integrate semantic knowledge into tasks ranging from image restoration and video understanding to knowledge graph reasoning and human mobility analysis. This work is significant because it addresses limitations of existing models that rely solely on surface-level features, leading to improved accuracy, robustness, and explainability in numerous applications across diverse fields.
Papers
HERMES: temporal-coHERent long-forM understanding with Episodes and Semantics
Gueter Josmy Faure, Jia-Fong Yeh, Min-Hung Chen, Hung-Ting Su, Shang-Hong Lai, Winston H. Hsu
From Semantics to Hierarchy: A Hybrid Euclidean-Tangent-Hyperbolic Space Model for Temporal Knowledge Graph Reasoning
Siling Feng, Zhisheng Qi, Cong Lin