Semantic Matching

Semantic matching focuses on identifying correspondences between textual or visual data based on their meaning, aiming to improve accuracy and efficiency in various tasks. Current research emphasizes developing robust models, often leveraging transformer architectures and incorporating techniques like contrastive learning, multi-scale feature analysis, and prompt engineering to enhance semantic understanding and address challenges such as noise and ambiguity. These advancements have significant implications for diverse applications, including information retrieval, recommendation systems, knowledge graph reasoning, and various natural language processing tasks, ultimately improving the accuracy and efficiency of these systems.

Papers