Relation Prediction

Relation prediction focuses on identifying and predicting relationships between entities within structured data like knowledge graphs or unstructured data like text and images. Current research emphasizes improving accuracy and efficiency through advanced model architectures, including graph neural networks, transformer networks, and large language models, often incorporating multiple knowledge sources (e.g., textual and structural information) to enhance representation learning. This field is crucial for advancing knowledge graph completion, information extraction, and various applications such as question answering, recommendation systems, and scene graph generation, ultimately leading to more comprehensive and insightful data analysis.

Papers