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Fusion-Based Retrieval-Augmented Generation for Complex Question Answering with LLMs
A paper proposing a Retrieval-Augmented Generation model that integrates structured and unstructured knowledge.
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Fusion-Based Retrieval-Augmented Generation for Complex Question Answering with LLMs
By Yumeng Sun, Renyuan Zhang, Ran Meng, Lian Lian, H. J. Wang, Xinyu Quan
Read original article →The paper presents a dual-channel knowledge retrieval mechanism that targets structured and unstructured sources. A unified knowledge fusion network integrates both types of information into a coherent generation context, enhancing the accuracy and linguistic quality of generated outputs.
The method shows strong stability and generalization in cross-domain tasks.
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