Relation Modeling

Relation modeling in machine learning focuses on capturing and utilizing relationships between data points, whether they be images and text, entities in a knowledge graph, or agents in a traffic simulation. Current research emphasizes learning robust representations by modeling diverse relationships, including pairwise associations, shared relations across modalities, and complex inter-class and intra-class structures within data. This is achieved through various techniques, such as contrastive learning, graph neural networks, and transformer architectures, often integrated with knowledge distillation or multi-task learning frameworks. The improved understanding and modeling of relations leads to more accurate and robust performance in diverse applications, including medical image analysis, knowledge graph completion, and autonomous driving.

Papers