Entity Embeddings

Entity embeddings represent knowledge graph entities as dense vectors, aiming to capture semantic relationships and facilitate tasks like knowledge graph completion, entity alignment, and question answering. Current research focuses on improving embedding quality through techniques like incorporating textual descriptions, leveraging large language models for enhanced semantic understanding, and employing graph neural networks to model complex relationships within and across knowledge graphs. These advancements are crucial for integrating diverse knowledge sources, improving the accuracy and efficiency of AI systems, and enabling more sophisticated applications in various domains, including medicine and scientific literature analysis.

Papers