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A key development is using Knowledge Graphs in conjunction with Retrieval Augmented Generation (RAG) supported methods.
These technologies address the limitations of Large Language Models (LLMs) by providing contextually accurate and deeply relevant information.
Think of a LLM as a vast library with a wide array of books on numerous subjects. You can find general information on almost anything, but the depth might vary, and it might not have the latest specialised research.
An LLM enhanced with knowledge graphs and RAG methods is like a cutting-edge research lab staffed by top experts. This lab has access to the latest research papers, specialised databases, and a network of interconnected knowledge, allowing it to provide deep insights and advanced understanding in its field of expertise.
RAG-based methods blend the strengths of LLMs with the precision of targeted data retrieval by incorporating relevant information from external sources into the language model’s input during the generation process. This enhances accuracy and knowledge grounding in the latest scholarly literature.
Knowledge graphs organise information into structured, interconnected entities. Each entity represents a real-world concept, such as a person, place, or thing, and is connected to other entities through relationships, like “is a part of” or “is related to.” This allows the AI to understand and utilise complex relationships between different pieces of data, providing richer and more nuanced responses.
Insight and Efficiency
Researchers benefit by exploring intricate relationships between research findings, gaining deeper insights, and facilitating discovery. Convenient access to high-quality academic content through familiar AI interfaces also makes the research workflow more efficient.
Value and Innovation
For publishers it means enhancing the value of their content. Providing personalised, contextually rich AI responses can improve user engagement and satisfaction, positioning publishers as innovative leaders in the digital landscape.
In summary, knowledge graphs and RAG-based methods significantly improve the utility of LLMs for both publishers and researchers. By offering contextually relevant information and deeper insights, these technologies help maintain the relevance and value of academic content in an increasingly AI-driven environment.