KGLA: Knowledge Graph Enhanced Language Agents for Recommendation Systems
Digital Innovation in the Era of Generative AI - A podcast by Andrea Viliotti
The episode introduces the KGLA framework, a recommendation system based on language agents enhanced by knowledge graphs. KGLA improves traditional recommendation systems based on large language models (LLMs) by providing detailed contextual information and creating more accurate user profiles through knowledge graphs that capture complex relationships between users and products. The system uses three modules: Path Extraction, Path Translation, and Path Incorporation. The first extracts significant paths in the knowledge graph, the second translates them into textual descriptions understandable by language agents, and the third incorporates them into the agents' decision-making process to enhance memory and recommendations. Experiments conducted on three public datasets demonstrated KGLA's effectiveness in improving recommendation quality over existing methods, achieving a significant increase in recommendation relevance.