ralm-d
GrowOVER: How Can LLMs Adapt to Growing Real-World Knowledge?
Ko, Dayoon, Kim, Jinyoung, Choi, Hahyeon, Kim, Gunhee
In the real world, knowledge is constantly evolving, which can render existing knowledge-based datasets outdated. This unreliability highlights the critical need for continuous updates to ensure both accuracy and relevance in knowledge-intensive tasks. To address this, we propose GrowOVER-QA and GrowOVER-Dialogue, dynamic open-domain QA and dialogue benchmarks that undergo a continuous cycle of updates, keeping pace with the rapid evolution of knowledge. Our research indicates that retrieval-augmented language models (RaLMs) struggle with knowledge that has not been trained on or recently updated. Consequently, we introduce a novel retrieval-interactive language model framework, where the language model evaluates and reflects on its answers for further re-retrieval. Our exhaustive experiments demonstrate that our training-free framework significantly improves upon existing methods, performing comparably to or even surpassing continuously trained language models.
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- North America > United States > Mississippi (0.04)
- Oceania > Marshall Islands > Ratak Chain > Majuro Atoll > Majuro (0.04)
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- Government > Regional Government (0.93)
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