CLFeb 12, 2025

Systematic Knowledge Injection into Large Language Models via Diverse Augmentation for Domain-Specific RAG

IBM
arXiv:2502.08356v314 citationsh-index: 12NAACL
Originality Incremental advance
AI Analysis

This addresses performance issues in domain-specific RAG applications, though it appears incremental as it builds on existing fine-tuning methods.

The paper tackles the problem of retrieval errors causing hallucinations in domain-specific RAG systems by proposing a framework that augments training data through context variation and knowledge paraphrasing, achieving up to 10% relative gain in token-level recall while preserving generalization.

Retrieval-Augmented Generation (RAG) has emerged as a prominent method for incorporating domain knowledge into Large Language Models (LLMs). While RAG enhances response relevance by incorporating retrieved domain knowledge in the context, retrieval errors can still lead to hallucinations and incorrect answers. To recover from retriever failures, domain knowledge is injected by fine-tuning the model to generate the correct response, even in the case of retrieval errors. However, we observe that without systematic knowledge augmentation, fine-tuned LLMs may memorize new information but still fail to extract relevant domain knowledge, leading to poor performance. In this work, we present a novel framework that significantly enhances the fine-tuning process by augmenting the training data in two ways -- context augmentation and knowledge paraphrasing. In context augmentation, we create multiple training samples for a given QA pair by varying the relevance of the retrieved information, teaching the model when to ignore and when to rely on retrieved content. In knowledge paraphrasing, we fine-tune with multiple answers to the same question, enabling LLMs to better internalize specialized knowledge. To mitigate catastrophic forgetting due to fine-tuning, we add a domain-specific identifier to a question and also utilize a replay buffer containing general QA pairs. Experimental results demonstrate the efficacy of our method over existing techniques, achieving up to 10\% relative gain in token-level recall while preserving the LLM's generalization capabilities.

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