Itinai.com llm large language model graph clusters quant comp 69744d4c 3b21 4fa5 ba57 af38e2af6ff4 2
Itinai.com llm large language model graph clusters quant comp 69744d4c 3b21 4fa5 ba57 af38e2af6ff4 2

G-Retriever: Advancing Real-World Graph Question Answering with RAG and LLMs

G-Retriever: Advancing Real-World Graph Question Answering with RAG and LLMs

Advancing Real-World Graph Question Answering with G-Retriever

Practical Solutions and Value

Large Language Models (LLMs) have made significant strides in artificial intelligence, but their ability to process complex structured data, particularly graphs, remains challenging. In our interconnected world, a substantial portion of real-world data inherently possesses a graph structure, including the Web, e-commerce systems, and knowledge graphs. Many of these involve textual graphs, making them suitable for LLM-centric methods.

Researchers have developed G-Retriever, an innovative architecture designed for GraphQA, integrating the strengths of Graph Neural Networks (GNNs), LLMs, and Retrieval-augmented generation (RAG). This framework enables efficient fine-tuning while preserving the LLM’s pre-trained language capabilities by freezing the LLM and using a soft prompting approach on the GNN’s output.

G-Retriever demonstrates superior performance across three datasets in various configurations, outperforming baselines in inference-only settings and showing significant improvements with prompt tuning and LoRA fine-tuning. The method greatly enhances efficiency by reducing token and node counts, leading to faster training times. It effectively mitigates hallucination by 54% compared to baselines.

This work introduces a new GraphQA benchmark for real-world graph question answering and presents G-Retriever, an architecture designed for complex graph queries. Unlike previous approaches focusing on conventional graph tasks or simple queries, G-Retriever targets real-world textual graphs across multiple applications. The method implements a RAG approach for general textual graphs, using soft prompting for enhanced graph understanding. G-Retriever employs Prize-Collecting Steiner Tree optimization to perform RAG over graphs, enabling resistance to hallucination and handling of large-scale graphs.

If you want to evolve your company with AI, stay competitive, use for your advantage G-Retriever: Advancing Real-World Graph Question Answering with RAG and LLMs.

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Vladimir Dyachkov, Ph.D
Editor-in-Chief itinai.com

I believe that AI is only as powerful as the human insight guiding it.

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