KG-LLM-Papers is a curated academic resource that collects and organizes research papers exploring the intersection between knowledge graphs and large language models. The repository functions as a continuously updated index of scholarly work that investigates how structured knowledge representations can enhance the reasoning, factual accuracy, and interpretability of language models. It includes surveys, benchmark studies, and cutting-edge research that examine topics such as knowledge graph-guided prompting, retrieval-augmented generation, reasoning over structured data, and hybrid architectures combining symbolic and neural systems. By gathering these papers into a single organized repository, the project helps researchers quickly discover relevant literature and track the evolution of the field.
Features
- Curated list of research papers combining knowledge graphs and large language models
- Categorization of papers by research topic and methodology
- Regular updates with new publications from top AI conferences and journals
- Links to datasets, code repositories, and implementations when available
- Coverage of surveys, benchmarks, and experimental frameworks
- Centralized reference for researchers exploring KG-LLM integration