CLAILGJan 14, 2025

Efficient Real-time Refinement of Language Model Text Generation

arXiv:2501.07824v52 citationsh-index: 20EMNLP
Originality Incremental advance
AI Analysis

This addresses the issue of factual errors in LLM outputs for users relying on accurate information, though it is incremental as it builds on existing verification and refinement techniques.

The paper tackles the problem of large language models generating factually incorrect answers by proposing Streaming-VR, a method that verifies and refines tokens in real-time during generation, which improves factual accuracy and efficiency compared to prior methods.

Large language models (LLMs) have shown remarkable performance across a wide range of natural language tasks. However, a critical challenge remains in that they sometimes generate factually incorrect answers. To address this, while many previous work has focused on identifying errors in their generation and further refining them, they are slow in deployment since they are designed to verify the response from LLMs only after their entire generation (from the first to last tokens) is done. Further, we observe that once LLMs generate incorrect tokens early on, there is a higher likelihood that subsequent tokens will also be factually incorrect. To this end, in this work, we propose Streaming-VR (Streaming Verification and Refinement), a novel approach designed to enhance the efficiency of verification and refinement of LLM outputs. Specifically, the proposed Streaming-VR enables on-the-fly verification and correction of tokens as they are being generated, similar to a streaming process, ensuring that each subset of tokens is checked and refined in real-time by another LLM as the LLM constructs its response. Through comprehensive evaluations on multiple datasets, we demonstrate that our approach not only enhances the factual accuracy of LLMs, but also offers a more efficient solution compared to prior refinement methods.

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