OneGen: Efficient One-Pass Unified Generation and Retrieval for LLMs

Jintian Zhang, Cheng Peng, Mengshu Sun, Xiang Chen, Lei Liang, Zhiqiang Zhang, Jun Zhou, Huajun Chen, Ningyu Zhang
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Abstract

Despite the recent advancements in Large Language Models (LLMs), which have significantly enhanced the generative capabilities for various NLP tasks, LLMs still face limitations in directly handling retrieval tasks. However, many practical applications demand the seamless integration of both retrieval and generation. This paper introduces a novel and efficient One-pass Generation and retrieval framework (OneGen), designed to improve LLMs' performance on tasks that require both generation and retrieval. The proposed framework bridges the traditionally separate training approaches for generation and retrieval by incorporating retrieval tokens generated autoregressively. This enables a single LLM to handle both tasks simultaneously in a unified forward pass. We conduct experiments on two distinct types of composite tasks, RAG and Entity Linking, to validate the pluggability, effectiveness, and efficiency of OneGen in training and inference. Furthermore, our results show that integrating generation and retrieval within the same context preserves the generative capabilities of LLMs while improving retrieval performance. To the best of our knowledge, OneGen is the first to enable LLMs to conduct vector retrieval during the generation.
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OneGen:LLM 的高效单程统一生成和检索
尽管大语言模型(LLMs)最近取得了长足的进步,大大增强了各种 NLP 任务的生成能力,但 LLMs 在直接处理检索任务方面仍然面临着局限性。然而,许多实际应用都需要检索和生成的无缝集成。本文介绍了一种新颖高效的 "一次生成和检索 "框架(OneGen),旨在提高 LLM 在同时需要生成和检索的任务中的性能。所提出的框架将自回归生成的检索标记纳入其中,从而弥合了传统上分别生成和检索的训练方法。这使得单个 LLM 可以在统一的前向传递中同时处理这两个任务。我们对 RAG 和 EntityLinking 两种不同类型的复合任务进行了实验,验证了 OneGenin 训练和推理的可插拔性、有效性和效率。此外,我们的结果表明,将生成和检索整合在同一上下文中,既能保留 LLM 的生成能力,又能提高检索性能。据我们所知,OneGen 是第一个能让 LLM 在生成过程中进行向量检索的技术。
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