Towards Verifiable Text Generation with Evolving Memory and Self-Reflection
CoRR(2023)
摘要
Despite the remarkable ability of large language models (LLMs) in language
comprehension and generation, they often suffer from producing factually
incorrect information, also known as hallucination. A promising solution to
this issue is verifiable text generation, which prompts LLMs to generate
content with citations for accuracy verification. However, verifiable text
generation is non-trivial due to the focus-shifting phenomenon, the intricate
reasoning needed to align the claim with correct citations, and the dilemma
between the precision and breadth of retrieved documents. In this paper, we
present VTG, an innovative framework for Verifiable Text Generation with
evolving memory and self-reflection. VTG introduces evolving long short-term
memory to retain both valuable documents and recent documents. A two-tier
verifier equipped with an evidence finder is proposed to rethink and reflect on
the relationship between the claim and citations. Furthermore, active retrieval
and diverse query generation are utilized to enhance both the precision and
breadth of the retrieved documents. We conduct extensive experiments on five
datasets across three knowledge-intensive tasks and the results reveal that VTG
significantly outperforms baselines.
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