Concept Representation

Concept representation research aims to understand how information is encoded and processed, focusing on creating models that capture meaningful, human-understandable concepts from data. Current efforts concentrate on developing robust and interpretable methods, often employing deep learning architectures like concept bottleneck models and self-organizing maps, along with techniques like contrastive learning and knowledge graph integration to improve concept extraction and compositionality. These advancements are crucial for enhancing the explainability and trustworthiness of AI systems, impacting fields ranging from visual reasoning and natural language processing to personalized education and safety-critical applications.

Papers